Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
survey

Conceptual Modeling: Topics, Themes, and Technology Trends

Published: 17 July 2023 Publication History

Abstract

Conceptual modeling is an important part of information systems development and use that involves identifying and representing relevant aspects of reality. Although the past decades have experienced continuous digitalization of services and products that impact business and society, conceptual modeling efforts are still required to support new technologies as they emerge. This paper surveys research on conceptual modeling over the past five decades and shows how its topics and trends continue to evolve to accommodate emerging technologies, while remaining grounded in basic constructs. We survey over 5,300 papers that address conceptual modeling topics from the 1970s to the present, which are collected from 35 multidisciplinary journals and conferences, and use them as the basis from which to analyze the progression of conceptual modeling. The important role that conceptual modeling should play in our evolving digital world is discussed, and future research directions proposed.

Supplementary Material

ZIP File (csur-2022-0424-app.zip)
Supplementary material

References

[1]
M. D. Abram, K. T. Mancini, and R. D. Parker. 2020. Methods to integrate natural language processing into qualitative research. International Journal of Qualitative Methods 19 (2020), 1609406920984608.
[2]
J. Abrial. 1974. Data Semantics in Database Management Systems. North Holland.
[3]
R. Agarwal, A. P. Sinha, and M. Tanniru. 1996. Cognitive fit in requirements modeling: A study of object and process methodologies. Journal of Management Information Systems 13, 2 (1996), 137–162.
[4]
M. I. Aguirre-Urreta and G. M. Marakas. 2008. Comparing conceptual modeling techniques: A critical review of the EER vs. OO empirical literature. ACM SIGMIS Database: The DATABASE for Advances in Information Systems 39, 2 (2008), 9–32.
[5]
A. Älgå, O. Eriksson, and M. Nordberg. 2020. Analysis of scientific publications during the early phase of the COVID-19 pandemic: Topic modeling study. Journal of Medical Internet Research 22, 11 (2020), e21559.
[6]
M. Alvesson and J. Sandberg. 2011. Generating research questions through problematization. Academy of Management Review 36, 2 (2011), 247–271.
[7]
T. Andreasen and J. F. Nilsson. 2004. Grammatical specification of domain ontologies. Data & Knowledge Engineering 48, 2 (2004), 221–230.
[8]
K. Andree, S. Ihde, and L. Pufahl. 2020. Exception handling in the context of fragment-based case management. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[9]
K. Andrews, S. Steinau, and M. Reichert. 2020. Dynamically switching execution context in data-centric BPM approaches. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[10]
L. Attouche et al. 2021. A test suite for JSON schema containment. In ER Demos/Posters. (2021).
[11]
P. Atzeni et al. 2013. The relational model is dead, SQL is dead, and I don't feel so good myself. ACM SIGMOD Record 42, 2 (2013), 64–68.
[12]
C. L. Azevedo et al. 2015. Modeling resources and capabilities in enterprise architecture: A well-founded ontology-based proposal for ArchiMate. Information Systems 54 (2015), 235–262.
[13]
C. W. Bachman. 1975. The data structure set model. In Proceedings of the 1974 ACM SIGFIDET (now SIGMOD) Workshop on Data Description, Access and Control: Data Models: Data-Structure-set Versus Relational.
[14]
C. W. Bachman and M. Daya. 1977. The role concept in data models. In Proceedings of the Third International Conference on Very Large Data Bases-Volume 3.
[15]
C. W. Bachman and S. Williams. 1964. A general purpose programming system for random access memories. In Proceedings of the October 27-29, 1964, Fall Joint Computer Conference, part I.
[16]
A. Baraani-Dastjerdi, J. Pieprzyk, and R. Safavi-Naini. 1997. A multi-level view model for secure object-oriented databases. Data & Knowledge Engineering 23, 2 (1997), 97–117.
[17]
C. Beeri and P. A. Bernstein. 1979. Computational problems related to the design of normal form relational schemas. ACM Transactions on Database Systems (TODS) 4, 1 (1979), 30–59.
[18]
N. Bencomo, S. Götz, and H. Song. 2019. [email protected]: A guided tour of the state of the art and research challenges. Software & Systems Modeling 18 (2019), 3049–3082.
[19]
P. Bera, A. Burton-Jones, and Y. Wand. 2018. Improving the representation of roles in conceptual modeling: Theory, method, and evidence. Requirements Engineering 23 (2018), 465–491.
[20]
M. Bergman, K. Lyytinen, and G. Mark. 2007. Boundary objects in design: An ecological view of design artifacts. Journal of the Association for Information Systems 8, 11 (2007), 34.
[21]
B. Bernárdez Jiménez et al. 2022. Effects of mindfulness on conceptual modeling performance: A series of experiments. IEEE Transactions on Software Engineering 48, 2 (2022), 432–452.
[22]
E. Bertino et al. 1992. Object-oriented query languages: The notion and the issues. IEEE Transactions on Knowledge and Data Engineering 4, 3 (1992), 223–237.
[23]
P. Beynon-Davies and M. D. Williams. 2003. The diffusion of information systems development methods. The Journal of Strategic Information Systems 12, 1 (2003), 29–46.
[24]
D. Bork et al. 2016. Using conceptual modeling to support innovation challenges in smart cities. In 2016 IEEE 18th International Conference on High Performance Computing and Communications; IEEE 14th International Conference on Smart City; IEEE 2nd International Conference on Data Science and Systems (HPCC/SmartCity/DSS). IEEE.
[25]
D. Bork, D. Karagiannis, and B. Pittl. 2020. A survey of modeling language specification techniques. Information Systems 87 (2020), 101425.
[26]
J. A. Bubenko. 1977. The Temporal Dimension in Information Modeling. Architecture & Models in Data Base Management Systems. GM Nijssen. North Holland Publishing Co., Amsterdam.
[27]
J. A. Bubenko. 1979. On the role of `understanding models' in conceptual schema design. In Fifth International Conference on Very Large Data Bases. IEEE.
[28]
F. Bugiotti et al. 2014. Database design for NoSQL systems. In Conceptual Modeling: 33rd International Conference, ER 2014, Atlanta, GA, USA, October 27-29, 2014. Proceedings 33. 2014. Springer.
[29]
A. Burton-Jones et al. 2021. Editor's comments: Advancing research transparency at MIS Quarterly: A pluralistic approach. Management Information Systems Quarterly 45, 2 (2021), iii–xviii.
[30]
A. Burton-Jones et al. 2017. Assessing representation theory with a framework for pursuing success and failure. MIS Quarterly 41, 4 (2017), 1307–1334.
[31]
M. Camargo, M. Dumas, and O. González-Rojas. 2020. Automated discovery of business process simulation models from event logs. Decision Support Systems 134 (2020), 113284.
[32]
L. A. Campbell et al. 2002. Automatically detecting and visualising errors in UML diagrams. Requirements Engineering 7 (2002), 264–287.
[33]
A. Castellanos et al. 2020. Basic classes in conceptual modeling: Theory and practical guidelines. Journal of the Association for Information Systems 21, 4 (2020), 3.
[34]
J. Chang et al. 2009. Reading tea leaves: How humans interpret topic models. Advances in Neural Information Processing Systems 22 (2009).
[35]
D. Chatziantoniou and V. Kantere. 2021. Just-in-time modeling with DataMingler. In ER Demos/Posters. (2021).
[36]
F. Chauvel et al. 2013. Models@runtime to support the iterative and continuous design of autonomic reasoners. In [email protected] (2013).
[37]
M. Chen, J. F. Nunamaker Jr., and E. S. Weber. 1989. Computer-aided software engineering: Present status and future directions. ACM SIGMIS Database: the DATABASE for Advances in Information Systems 20, 1 (1989), 7–13.
[38]
P. P.-S. Chen. 1979. The entity-relationship model—toward a unified view of data. ACM Transactions on Database Systems (TODS) 1, 1 (1979), 9–36.
[39]
C. Chua et al. 2022. MISQ research curation on data management. MIS Quarterly (2022), 1–12.
[40]
C. E. H. Chua and V. C. Storey. 2016. Bottom-up enterprise information systems: Rethinking the roles of central IT departments. Communications of the ACM 60, 1 (2016), 66–72.
[41]
J. Chuang et al. 2012. Interpretation and trust: Designing model-driven visualizations for text analysis. In Proceedings of the SIGCHI Conference on Human Factors in Computing Systems.
[42]
F. Ciccozzi et al. 2018. Towards a body of knowledge for model-based software engineering. In Proceedings of the 21st ACM/IEEE International Conference on Model Driven Engineering Languages and Systems: Companion Proceedings.
[43]
E. F. Codd. 1970. A relational model of data for large shared data banks. Communications of the ACM 13, 6 (1970), 377–387.
[44]
K. B. Cohen et al. 2010. The structural and content aspects of abstracts versus bodies of full text journal articles are different. BMC Bioinformatics 11 (2010), 1–10.
[45]
I. Compagnucci et al. 2021. Trends on the usage of BPMN 2.0 from publicly available repositories. In Perspectives in Business Informatics Research: 20th International Conference on Business Informatics Research, BIR 2021, Vienna, Austria, September 22–24, 2021, Proceedings 20. Springer.
[46]
A. Conrad, S. Gärtner, and U. Störl. 2021. Towards automated schema optimization. In ER Demos/Posters. (2021).
[47]
J. D. Couger. 1973. Evolution of business system analysis techniques. ACM Computing Surveys (CSUR) 5, 3 (1973), 167–198.
[48]
S. Curty, F. Härer, and H.-G. Fill. 2021. Towards the comparison of blockchain-based applications using enterprise modeling. In ER Demos/Posters. (2021).
[49]
P. Darke and G. Shanks. 1997. User viewpoint modelling: Understanding and representing user viewpoints during requirements definition. Information Systems Journal 7, 3 (1997), 213–219.
[50]
E. Daubert et al. 2012. A models@runtime framework for designing and managing service-based applications. In 2012 First International Workshop on European Software Services and Systems Research-Results and Challenges (S-Cube). IEEE.
[51]
I. Davies et al. 2006. How do practitioners use conceptual modeling in practice? Data & Knowledge Engineering 58, 3 (2006), 358–380.
[52]
V. De Antonellis and A. Di Leva. 1985. A case study of database design using the DATAID approach. Information Systems 10, 3 (1985), 339–359.
[53]
O. de Sousa Santos et al. 2019. Conceptual modeling for corporate social responsibility: A systematic literature review. In Economics of Grids, Clouds, Systems, and Services: 16th International Conference, GECON 2019, Leeds, UK, September 17–19, 2019, Proceedings 16. Springer.
[54]
L. M. Delcambre, S. W. Liddle, O. Pastor, and V. C. Storey. 2018. A reference framework for conceptual modeling. In Proceedings of the Conceptual Modeling: 37th International Conference (ER'18), Xi'an, China, October 22--25, 2018. Springer International Publishing. 27--42.
[55]
L. M. Delcambre et al. 2021. Articulating conceptual modeling research contributions. In Advances in Conceptual Modeling: ER 2021 Workshops CoMoNoS, EmpER, CMLS St. John's, NL, Canada, October 18–21, 2021, Proceedings 40. 2021. Springer.
[56]
Y. Deng et al. 2022. More than the quantity: The value of editorial reviews for a user-generated content platform. Management Science 68, 9 (2022), 6865–6888.
[57]
O. Díaz et al. 2013. Harvesting models from web 2.0 databases. Software & Systems Modeling 12 (2013), 15–34.
[58]
B. Dobing and J. Parsons. 2006. How UML is used. Communications of the ACM 49, 5 (2006), 109–113.
[59]
J. Eisenstein. 2019. Introduction to Natural Language Processing. MIT Press.
[60]
M. J. Eppler and J. Mengis. 2004. The concept of information overload - A review of literature from organization science, accounting, marketing, MIS, and related disciplines. The Information Society: An International Journal 20, 5 (2004), 1–20.
[61]
J. Erickson, K. Lyytinen, and K. Siau. 2005. Agile modeling, agile software development, and extreme programming: The state of research. Journal of Database Management (JDM) 16, 4 (2005), 88–100.
[62]
O. Eriksson and P. J. Ågerfalk. 2010. Rethinking the meaning of identifiers in information infrastructures. Journal of the Association for Information Systems 11, 8 (2010), 1.
[63]
O. Eriksson and P. J. Ågerfalk. 2022. Speaking things into existence: Ontological foundations of identity representation and management. Information Systems Journal 32, 1 (2022), 33–60.
[64]
O. Eriksson, P. Johannesson, and M. Bergholtz. 2019. The case for classes and instances - A response to representing instances: Tcase for reengineering conceptual modelling grammars. European Journal of Information Systems 28, 6 (2019), 681–693.
[65]
R. Eshuis and R. Wieringa. 2004. Tool support for verifying UML activity diagrams. IEEE Transactions on Software Engineering 30, 7 (2004), 437–447.
[66]
J. Evermann, J.-R. Rehse, and P. Fettke. 2016. Process discovery from event stream data in the cloud - A scalable, distributed implementation of the flexible heuristics miner on the Amazon kinesis cloud infrastructure. In 2016 IEEE International Conference on Cloud Computing Technology and Science (CloudCom). IEEE.
[67]
R. Fagin. 1981. A normal form for relational databases that is based on domains and keys. ACM Transactions on Database Systems (TODS) 6, 3 (1981), 387–415.
[68]
A. Fayoumi and P. Loucopoulos. 2016. Conceptual modeling for the design of intelligent and emergent information systems. Expert Systems with Applications 59 (2016), 174–194.
[69]
R. Feldman and J. Sanger. 2007. The Text Mining Handbook: Advanced Approaches in Analyzing Unstructured Data. Cambridge University Press.
[70]
P. C. B. Fernandes, R. S. Guizzardi, and G. Guizzardi. 2011. Using goal modeling to capture competency questions in ontology-based systems. Journal of Information and Data Management 2, 3 (2011), 527–527.
[71]
P. Fettke. 2009. How conceptual modeling is used. Communications of the Association for Information Systems 25, 1 (2009), 43.
[72]
P. Fettke. 2020. Conceptual modelling and artificial intelligence. In EMISA Forum 40, 1 (2020). De Gruyter.
[73]
S. Finkelstein, M. Schkolnick, and P. Tiberio. 1988. Physical database design for relational databases. ACM Transactions on Database Systems (TODS) 13, 1 (1988), 91–128.
[74]
S. Flake and W. Mueller. 2003. Formal semantics of static and temporal state-oriented OCL constraints. Software & Systems Modeling 2 (2003), 164–186.
[75]
U. Frank. 2022. Multi-level modeling: Cornerstones of a rationale: Comparative evaluation, integration with programming languages, and dissemination strategies. Software and Systems Modeling 21, 2 (2022), 451–480.
[76]
U. Frank et al. 2014. The research field “modeling business information systems” current challenges and lements of a future research agenda. Wirtschaftsinformatik 56 (2014), 49–54.
[77]
M. T. Frigo et al. 2020. A toolbox for the internet of things - Easing the setup of IoT applications. In ER Forum/Posters/Demos. (2020).
[78]
T. Frisendal. 2016. Graph Data Modeling for NoSQL and SQL: Visualize Structure and Meaning. Technics Publications.
[79]
M. Fruth et al. 2020. Challenges in checking JSON schema containment over evolving real-world schemas. In Advances in Conceptual Modeling: ER 2020 Workshops CMAI, CMLS, CMOMM4FAIR, CoMoNoS, EmpER, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[80]
F. Gailly and G. Poels. 2010. Conceptual modeling using domain ontologies: Improving the domain-specific quality of conceptual schemas. In Proceedings of the 10th Workshop on Domain-Specific Modeling.
[81]
A. Gangemi et al. 2002. Sweetening ontologies with DOLCE. In Knowledge Engineering and Knowledge Management: Ontologies and the Semantic Web: 13th International Conference, EKAW 2002 Sigüenza, Spain, October 1–4, 2002 Proceedings 13. Springer.
[82]
A. Gemino and Y. Wand. 2005. Complexity and clarity in conceptual modeling: Comparison of mandatory and optional properties. Data & Knowledge Engineering 55, 3 (2005), 301–326.
[83]
R. Gerritsen. 1975. A preliminary system for the design of DBTG data structures. Communications of the ACM 18, 10 (1975), 551–557.
[84]
R. C. Goldstein and V. C. Storey. 1994. Materialization [database design]. IEEE Transactions on Knowledge and Data Engineering 6, 5 (1994), 835–842.
[85]
R. C. Goldstein and V. C. Storey. 1999. Data abstractions: Why and how? Data & Knowledge Engineering 29, 3 (1999), 293–311.
[86]
T. Gray, D. Bork, and M. De Vries. 2020. A new DEMO modelling tool that facilitates model transformations. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[87]
N. Guarino, G. Guizzardi, and J. Mylopoulos. 2020. On the philosophical foundations of conceptual models. Information Modelling and Knowledge Bases 31, 321 (2020), 1.
[88]
G. Guizzardi. 2005. Ontological Foundations for Structural Conceptual Models. PhD Dissertation, University of Twente.
[89]
G. Guizzardi et al. 2021. Ontological unpacking as explanation: The case of the viral conceptual model. In Conceptual Modeling: 40th International Conference, ER 2021, Virtual Event, October 18–21, 2021, Proceedings 40. Springer.
[90]
G. Guizzardi et al. 2015. Towards ontological foundations for conceptual modeling: The Unified Foundational Ontology (UFO) story. Applied Ontology 10, 3-4 (2015), 259–271.
[91]
A. Gupta, G. Poels, and P. Bera. 2019. Creation of multiple conceptual models from user stories – A natural language processing Approach. In Advances in Conceptual Modeling: ER 2019 Workshops FAIR, MREBA, EmpER, MoBiD, OntoCom, and ER Doctoral Symposium Papers, Salvador, Brazil, November 4–7, 2019, Proceedings 38. Springer.
[92]
A. K. Gupta, K. G. Smith, and C. E. Shalley. 2006. The interplay between exploration and exploitation. Academy of Management Journal 49, 4 (2006), 693–706.
[93]
T. A. Halpin and H. A. Proper. 1995. Subtyping and polymorphism in object-role modelling. Data & Knowledge Engineering 15, 3 (1995), 251–281.
[94]
Y. B. Hamadi, S. Heng, and Y. Wautelet. 2021. Using i*-based organizational modeling to support blockchain-oriented software engineering: Case study in supply chain management. In Research and Innovation Forum 2020: Disruptive Technologies in Times of Change. Springer.
[95]
F. Härer and H.-G. Fill. 2020. Past trends and future prospects in conceptual modeling - A bibliometric analysis. In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[96]
S. Hartmann et al. 2020. A conceptual framework for dynamic planning of alternative routes in road networks. In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[97]
T. Hills. 2016. NoSQL and SQL Data odeling: Bringing Together Data, Semantics, and Software. Technics Publications.
[98]
U. Hohenstein and G. Engels. 1990. Formal semantics of an entity-relationship-based query language. In ER. (1990).
[99]
S. J. Hoppenbrouwers, H. A. Proper, and T. P. van der Weide. 2005. A fundamental view on the process of conceptual modeling. In Conceptual Modeling–ER 2005: 24th International Conference on Conceptual Modeling, Klagenfurt, Austria, October 24-28, 2005. Proceedings 24. Springer.
[100]
I.-C. Hsu. 2013. Visual modeling for Web 2.0 applications using model driven architecture approach. Simulation Modelling Practice and Theory 31 (2013), 63–76.
[101]
R. Hull and R. King. 1987. Semantic database modeling: Survey, applications, and research issues. ACM Computing Surveys (CSUR) 19, 3 (1987), 201–260.
[102]
M. Hvalshagen, R. Lukyanenko, and B. M. Samuel. 2023. Empowering users with narratives: Examining the efficacy of narratives for understanding data-oriented conceptual models. Information Systems Research (2023).
[103]
P. Iacub. 2015. Software ERP: El nuevo Gran Hermano de las organizaciones. Buenos Aires, Argentina: Autores de Argentina. Recuperado de. https://bit.ly/3phEmbX.
[104]
H. Jelodar et al. 2019. Latent Dirichlet allocation (LDA) and topic modeling: Models, applications, a survey. Multimedia Tools and Applications 78 (2019), 15169–15211.
[105]
M. A. Jeusfeld. 2021. Multilevel modeling with conceptbase. In ER Demos and Posters 2021 co-located with 40th International Conference on Conceptual Modeling (ER 2021), St. John's, NL, Canada, October 18-21, 2021, held virtually. 2021. CEUR-WS.
[106]
M. A. Jeusfeld and B. Neumayr. 2016. DeepTelos: Multi-level modeling with most general instances. In Conceptual Modeling: 35th International Conference, ER 2016, Gifu, Japan, November 14-17, 2016, Proceedings 35. Springer.
[107]
Y. Jin, R. Esser, and J. W. Janneck. 2004. A method for describing the syntax and semantics of UML statecharts. Software and Systems Modeling 3, 2 (2004), 150–163.
[108]
R. A. Johnson. 2002. Object-oriented systems development: A review of empirical research. Communications of the Association for Information Systems 8, 1 (2002), 4.
[109]
I. T. Jolliffe. 1986. Principal Component Analysis. Springer-Verlag New York.
[110]
P. Junni et al. 2013. Organizational ambidexterity and performance: A meta-analysis. Academy of Management Perspectives 27, 4 (2013), 299–312.
[111]
R. Kaschek and L. M. Delcambre. 2011. The evolution of conceptual modeling: From a historical perspective towards the future of conceptual modeling. Springer, 6520 (2011).
[112]
K. Kaur and R. Rani. 2013. Modeling and querying data in NoSQL databases. In 2013 IEEE International Conference on Big Data. IEEE.
[113]
W. Kent. 1978. Data and Reality: Basic Assumptions in Data Processing Reconsidered. North-Holland, Amsterdam.
[114]
V. Khatri and B. M. Samuel. 2019. Analytics for managerial work. Communications of the ACM 62, 4 (2019), 100–100.
[115]
D. Kim et al. 2019. Multi-co-training for document classification using various document representations: TF–IDF, LDA, and Doc2Vec. Information Sciences 477 (2019), 15–29.
[116]
J. W. Klimbie and K. L. Koffeman. 1974. Data Base Management: Proceedings of the IFIP Working Conference on Data Base Management. North-Holland.
[117]
K. S. Komar et al. 2020. EER MLN: EER approach for modeling, mapping, and analyzing complex data using multilayer networks (MLNs). In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings. Springer.
[118]
A. Koopman and L. F. Seymour. 2020. Factors impacting successful BPMS adoption and use: A South African financial services case study. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[119]
G. Koutsopoulos, M. Henkel, and J. Stirna. 2020. Conceptualizing capability change. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[120]
T. S. Kuhn. 1962. The Structure of Scientific Revolutions. Chicago (University of Chicago Press).
[121]
L. A. Kurgan and P. Musilek. 2006. A survey of knowledge discovery and data mining process models. The Knowledge Engineering Review 21, 1 (2006), 1–24.
[122]
J. Ladleif and M. Weske. 2019. A unifying model of legal smart contracts. In Conceptual Modeling: 38th International Conference, ER 2019, Salvador, Brazil, November 4–7, 2019, Proceedings 38. Springer.
[123]
A. H. F. Laender et al. 1994. An analysis of SQL integrity constraints from an entity-relationship model perspective. Information Systems 19, 4 (1994), 331–358.
[124]
K. R. Larsen and C. H. Bong. 2016. A tool for addressing construct identity in literature reviews and meta-analyses. MIS Quarterly 40, 3 (2016), 529–552.
[125]
J. H. Lau and T. Baldwin. 2016. An empirical evaluation of doc2vec with practical insights into document embedding generation. arXiv preprint arXiv:1607.05368.
[126]
S. J. Leemans et al. 2020. Identifying cohorts: Recommending drill-downs based on differences in behaviour for process mining. In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[127]
C. Legner et al. 2017. Digitalization: Opportunity and challenge for the business and information systems engineering community. Business & Information Systems Engineering 59 (2017), 301–308.
[128]
M. Levene and M. W. Vincent. 2000. Justification for inclusion dependency normal form. IEEE Transactions on Knowledge and Data Engineering 12, 2 (2000), 281–291.
[129]
Y. Li, F. Currim, and S. Ram. 2022. Data completeness and complex semantics in conceptual modeling: The need for a disaggregation construct. ACM Journal of Data and Information Quality 14, 4 (2022), 1–21.
[130]
Y.-k. Lim. 2004. Multiple aspect based task analysis (MABTA) for user requirements gathering in highly-contextualized interactive system design. In Proceedings of the 3rd Annual Conference on Task Models and Diagrams.
[131]
L. H. C. Lima et al. 2020. An analysis of the collaboration network of the International Conference on Conceptual Modeling at the Age of 40. Data & Knowledge Engineering 130 (2020), 101866.
[132]
J. Lin. 2009. Is searching full text more effective than searching abstracts? BMC Bioinformatics 10 (2009), 1–15.
[133]
Y. Liu et al. 2019. RoBERTa: A robustly optimized BERT pretraining approach. arXiv preprint arXiv:1907.11692.
[134]
E. Loper and S. Bird. 2002. NLTK: The natural language toolkit. arXiv preprint cs/0205028.
[135]
R. Lukyanenko et al. 2019. Using conceptual modeling research to support machine learning. In Information Systems Engineering in Responsible Information Systems (CAiSE). Rome, Italy, (June 3–7, 2019). Springer.
[136]
R. Lukyanenko and J. Parsons. 2013. Is traditional conceptual modeling becoming obsolete? In Conceptual Modeling: 32nd International Conference, ER 2013, Hong-Kong, China, November 11-13, 2013. Proceedings 32. Springer.
[137]
R. Lukyanenko, J. Parsons, and B. M. Samuel. 2019. Representing instances: The case for reengineering conceptual modelling grammars. European Journal of Information Systems 28, 1 (2019), 68–90.
[138]
R. Lukyanenko et al. 2017. Representing crowd knowledge: Guidelines for conceptual modeling of user-generated content. Journal of the Association for Information Systems 18, 4 (2017), 2.
[139]
R. Lukyanenko, V. Storey, and A. Castellanos. 2020. Introducing GSO: A General Systemist Ontology. In ER Forum/Posters/Demos. (2020).
[140]
R. Lukyanenko, V. C. Storey, and O. Pastor. 2022. System: A core conceptual modeling construct for capturing complexity. Data & Knowledge Engineering 141 (2022), 102062.
[141]
W. Maass and V. C. Storey. 2021. Pairing conceptual modeling with machine learning. Data & Knowledge Engineering 134 (2021), 101909.
[142]
C. D. Manning, P. Raghavan, and H. Schutze. 2008. Introduction to Information Retrieval. Cambridge University Press. 482.
[143]
J. G. March. 1991. Exploration and exploitation in organizational learning. Organization Science 2, 1 (1991), 71–87.
[144]
V. M. Markowitz and A. Shoshani. 1992. Representing extended entity-relationship structures in relational databases: A modular approach. ACM Transactions on Database Systems (TODS) 17, 3 (1992), 423–464.
[145]
R. E. Mayer. 2002. Multimedia learning. In Psychology of Learning and Motivation. Elsevier. 85–139.
[146]
H. C. Mayr and B. Thalheim. 2021. The triptych of conceptual modeling: A framework for a better understanding of conceptual modeling. Software and Systems Modeling 20, 1 (2021), 7–24.
[147]
A. K. McCallum. 2002. Mallet: A machine learning for languagetoolkit. http://mallet.cs.umass.edu.
[148]
M. McDaniel and V. C. Storey. 2019. Evaluating domain ontologies: Clarification, classification, and challenges. ACM Computing Surveys (CSUR) 52, 4 (2019), 1–44.
[149]
N. Mehdiyev, J. Evermann, and P. Fettke. 2017. A multi-stage deep learning approach for business process event prediction. In 2017 IEEE 19th Conference on Business Informatics (CBI). IEEE.
[150]
N. Mehdiyev, J. Evermann, and P. Fettke. 2020. A novel business process prediction model using a deep learning method. Business & Information Systems Engineering 62 (2020), 143–157.
[151]
N. Mehdiyev and P. Fettke. 2021. Explainable artificial intelligence for process mining: A general overview and application of a novel local explanation approach for predictive process monitoring. Interpretable Artificial Intelligence: A Perspective of Granular Computing (2021). 1–28.
[152]
H. Mihoubi, A. Simonet, and M. Simonet. 1998. Towards a declarative approach for reusing domain ontologies. Information Systems 23, 6 (1998), 365–381.
[153]
C. Mohan. 1978. An overview of recent data base research. ACM SIGMIS Database: The DATABASE for Advances in Information Systems 10, 2 (1978), 3–24.
[154]
A. I. Molina, M. A. Redondo, and M. Ortega. 2009. A review of notations for conceptual modeling of groupware systems. New Trends on Human–Computer Interaction: Research, Development, New Tools and Methods (2009), 75–86.
[155]
N. H. Møller et al. 2020. Who does the work of data? Interactions 27, 3 (2020), 52–55.
[156]
D. L. Moody and G. G. Shanks. 2003. Improving the quality of data models: Empirical validation of a quality management framework. Information Systems 28, 6 (2003), 619–650.
[157]
F. Muff and H.-G. Fill. 2021. Initial concepts for augmented and virtual reality-based enterprise modeling. In ER Demos/Posters (2021).
[158]
J. Mylopoulos. 1998. Information modeling in the time of the revolution. Information Systems 23, 3-4 (1998), 127–155.
[159]
S. Nalchigar and E. Yu. 2017. Conceptual modeling for business analytics: A framework and potential benefits. In 2017 IEEE 19th Conference on Business Informatics (CBI). IEEE.
[160]
S. Nalchigar and E. Yu. 2018. Business-driven data analytics: A conceptual modeling framework. Data & Knowledge Engineering 117 (2018), 359–372.
[161]
P. A. Ng. 1981. Further analysis of the entity-relationship approach to database design. IEEE Transactions on Software Engineering, 1 (1981), 85–99.
[162]
F. Niederman, T. W. Ferratt, and E. M. Trauth. 2016. On the co-evolution of information technology and information systems personnel. ACM SIGMIS Database: the DATABASE for Advances in Information Systems 47, 1 (2016), 29–50.
[163]
G. M. Nijssen. 1972. Common data base languages. ACM SIGMIS Database: The DATABASE for Advances in Information Systems 4, 4 (1972), 7–11.
[164]
G. M. Nijssen. 1974. Data structuring in the DDL and relational data model. In IFIP Working Conference Data Base Management.
[165]
G. M. Nijssen. 1975. Two major flaws in the CODASYL DDL 1973 and proposed corrections. Information Systems 1, 4 (1975), 115–132.
[166]
G. M. Nijssen. 1977. Architecture and models in data base management. Proceedings of the IFIP-TC-2 Working Conference, 4th, Nice, January, 1977, ed. G. M. Nijssen. Elsevier Science Inc.
[167]
A. Olivé. 2007. Conceptual Modeling of Information Systems. Springer Science & Business Media.
[168]
T. W. Olle. 1974. Data definition spectrum and procedurality spectrum in data Base management systems. In IFIP Working Conference Data Base Management.
[169]
A. L. Opdahl and B. Henderson-Sellers. 2004. A template for defining enterprise modelling constructs. Journal of Database Management (JDM) 15, 2 (2004), 39–73.
[170]
P. Palvia. 1988. Sensitivity of the physical database design to changes in underlying factors. Information & Management. 15, 3 (1988), 151–161.
[171]
G. Paré et al. 2016. Contextualizing the twin concepts of systematicity and transparency in information systems literature reviews. European Journal of Information Systems 25 (2016), 493–508.
[172]
C. Parent and S. Spaccapietra. 1985. An algebra for a general entity-relationship model. IEEE Transactions on Software Engineering, 7 (1985), 634–643.
[173]
J. Parsons and Y. Wand. 2008. Using cognitive principles to guide classification in information systems modeling. MIS Quarterly (2008), 839–868.
[174]
O. Pastor. 2016. Conceptual modeling of life: Beyond the homo sapiens. In Conceptual Modeling: 35th International Conference, ER 2016, Gifu, Japan, November 14-17, 2016, Proceedings 35. Springer.
[175]
O. Pastor and J. C. Molina. 2007. Model-driven architecture in practice: A software production environment based on conceptual modeling, Vol. 1. Springer.
[176]
F. Paterno, C. Mancini, and S. Meniconi. 1997. ConcurTaskTrees: A diagrammatic notation for specifying task models. In Human-Computer Interaction INTERACT’97: IFIP TC13 International Conference on Human-Computer Interaction, 14th–18th July 1997, Sydney, Australia. Springer.
[177]
J. Peckham and F. Maryanski. 1988. Semantic data models. ACM Computing Surveys (CSUR) 20, 3 (1988), 153–189.
[178]
D. Pinelle. 2004. Improving groupware design for loosely coupled groups. University of Saskatchewan Saskatoon, SK, Canada.
[179]
M. Pourbafrani, S. J. van Zelst, and W. M. van der Aalst. 2020. Semi-automated time-granularity detection for data-driven simulation using process mining and system dynamics. In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[180]
S. Purao and V. C. Storey. 2005. A multi-layered ontology for comparing relationship semantics in conceptual models of databases. Applied Ontology 1, 1 (2005), 117–139.
[181]
E. Rakhmetova, C. Combi, and A. Fruggi. 2021. Conceptual modelling of log files: From a UML-based design to JSON files. In ER Demos/Posters. (2021).
[182]
Q. Ramadan et al. 2020. A semi-automated BPMN-based framework for detecting conflicts between security, data-minimization, and fairness requirements. Software and Systems Modeling 19 (2020), 1191–1227.
[183]
J. Recker et al. 2009. Business process modeling - A comparative analysis. Journal of the Association for Information Systems 10, 4 (2009), 1.
[184]
J. C. Recker et al. 2021. From representation to mediation: A new agenda for conceptual modeling research in a digital world. MIS Quarterly 45, 1 (2021), 269–300.
[185]
H. A. Reijers, J. Recker, and S. G. van de Wouw. 2010. An integrative framework of the factors affecting process model understanding: A learning perspective. In 16th Americas Conference on Information Systems: Sustainable IT Collaboration Around the Globe. Association for Information Systems, Paper. 2010.
[186]
U. Reimer et al. 2020. Preface of the First Workshop Models in AI. In Modellierung (Companion). (2020).
[187]
N. Reimers and I. Gurevych. 2019. Sentence-BERT: Sentence embeddings using Siamese BERT-networks. arXiv preprint arXiv:1908.10084.
[188]
M. Röder, A. Both, and A. Hinneburg. 2015. Exploring the space of topic coherence measures. In Proceedings of the Eighth ACM International Conference on Web Search and Data Mining.
[189]
F. H. Rodrigues, J. L. Carbonera, and M. Abel. 2020. Upper-level types of occurrent based on the Principle of Ontological Conservation. In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[190]
C. Rolland, J. A. Bubenko, and A. Sølvberg. 2013. The CAiSE Adventure: Seminal Contributions to Information Systems Engineering. (2013).
[191]
E. Rolón et al. 2009. Analysis and validation of control-flow complexity measures with BPMN process models. In Enterprise, Business-Process and Information Systems Modeling: 10th International Workshop, BPMDS 2009, and 14th International Conference, EMMSAD 2009, held at CAiSE 2009, Amsterdam, The Netherlands, June 8-9, 2009. Proceedings. Springer.
[192]
L. Rönnbäck et al. 2010. Anchor modeling—Agile information modeling in evolving data environments. Data & Knowledge Engineering 69, 12 (2010), 1229–1253.
[193]
C. Rossi, M. Enciso, and I. P. de Guzmán. 2004. Formalization of UML state machines using temporal logic. Software & Systems Modeling 3 (2004), 31–54.
[194]
M. Ruiz and B. Hasselman. 2020. Can we design software as we talk? A research idea. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[195]
A. Ruscheinski, T. Warnke, and A. M. Uhrmacher. 2019. Artifact-based workflows for supporting simulation studies. IEEE Transactions on Knowledge and Data Engineering 32, 6 (2019), 1064–1078.
[196]
M. A. J. Sabegh et al. 2018. Conceptual modeling research: Revisiting and updating Wand and Weber's 2002 Research Agenda. AIS SIGSAND (2018), 1–12.
[197]
A. Saghafi, Y. Wand, and J. Parsons. 2022. Skipping class: Improving human-driven data exploration and querying through instances. European Journal of Information Systems 31, 4 (2022), 463–491.
[198]
S. Sakthivel. 1992. Methodological requirements for information systems development. Journal of Information Technology 7, 3 (1992), 141–148.
[199]
B. M. Samuel, V. Khatri, and V. Ramesh. 2018. Exploring the effects of extensional versus intensional representations on domain understanding. MIS Quarterly 42, 4 (2018), 1187–1210.
[200]
K. Sandkuhl et al. 2018. From expert discipline to common practice: A vision and research agenda for extending the reach of enterprise modeling. Business & Information Systems Engineering 60 (2018), 69–80.
[201]
K. Sandkuhl and J. Stirna. 2020. Supporting early phases of digital twin development with enterprise modeling and capability management: Requirements from two industrial cases. In Enterprise, Business-Process and Information Systems Modeling: 21st International Conference, BPMDS 2020, 25th International Conference, EMMSAD 2020, Held at CAiSE 2020, Grenoble, France, June 8–9, 2020, Proceedings 21. Springer.
[202]
N. Sangal et al. 2005. Using dependency models to manage complex software architecture. In Proceedings of the 20th Annual ACM SIGPLAN Conference on Object-oriented Programming, Systems, Languages, and Applications.
[203]
A. Schram and K. M. Anderson. 2012. MySQL to NoSQL: Data modeling challenges in supporting scalability. In Proceedings of the 3rd Annual Conference on Systems, Programming, and Applications: Software for Humanity.
[204]
C. Sernadas, J. Fiadeiro, and A. Sernadas. 1990. Modular construction of logic knowledge bases: An algebraic approach. Information Systems 15, 1 (1990), 37–59.
[205]
G. Shanks. 1997. The challenges of strategic data planning in practice: An interpretive case study. The Journal of Strategic Information Systems 6, 1 (1997), 69–90.
[206]
K. Siau et al. 2022. Information systems analysis and design: Past revolutions, present challenges, and future research directions. Communications of the Association for Information Systems 50, 1 (2022), 33.
[207]
E. Sibley. 1974. Data management systems-user requirements. Data Base Management Systems (1974), 83–105.
[208]
C. Sievert and K. Shirley. 2014. LDAvis: A method for visualizing and interpreting topics. In Proceedings of the Workshop on Interactive Language Learning, Visualization, and Interfaces.
[209]
L. Simonette et al. 1974. The CODASYL and GUIDE/SHARE proposals on data base management systems. In Proceedings of the May 6-10, 1974, National Computer Conference and EXPOSITion.
[210]
J. M. Smith and D. C. Smith. 1977. Database abstractions: Aggregation and generalization. ACM Transactions on Database Systems (TODS) 2, 2 (1977), 105–133.
[211]
S. L. Star and A. Strauss. 1999. Layers of silence, arenas of voice: The ecology of visible and invisible work. Computer Supported Cooperative Work 8, 1-2 (1999), 9–30.
[212]
V. C. Storey. 1991. Relational database design based on the Entity-Relationship model. Data & Knowledge Engineering 7, 1 (1991), 47–83.
[213]
V. C. Storey. 1993. Understanding semantic relationships. The VLDB Journal 2 (1993), 455–488.
[214]
V. C. Storey and I.-Y. Song. 2017. Big data technologies and management: What conceptual modeling can do. Data & Knowledge Engineering 108 (2017), 50–67.
[215]
G. Strawson. 2008. Real materialism: And other essays. Oxford University Press.
[216]
V. Sugumaran and V. C. Storey. 2002. Ontologies for conceptual modeling: Their creation, use, and management. Data & Knowledge Engineering 42, 3 (2002), 251–271.
[217]
V. Sugumaran and V. C. Storey. 2006. The role of domain ontologies in database design: An ontology management and conceptual modeling environment. ACM Transactions on Database Systems (TODS) 31, 3 (2006), 1064–1094.
[218]
B. Sundgren. 1974. Conceptual Foundation of the Infological Approach to Data Bases. Data Base Management, J. W. Klimbie and K. L. Koffeman, (Eds.). North-Holland Pub. Co., Amsterdam (1974), 61–95.
[219]
R. Syed. 2020. Cybersecurity vulnerability management: A conceptual ontology and cyber intelligence alert system. Information & Management 57, 6 (2020), 103334.
[220]
M. Templier and G. Pare. 2018. Transparency in literature reviews: An assessment of reporting practices across review types and genres in top IS journals. European Journal of Information Systems 27, 5 (2018), 503–550.
[221]
J. T. Teng and W. J. Kettinger. 1995. Business process redesign an information architecture: Exploring the relationships. ACM SIGMIS Database: the DATABASE for Advances in Information Systems 26, 1 (1995), 30–42.
[222]
T. J. Teorey, D. Yang, and J. P. Fry. 1986. A logical design methodology for relational databases using the extended entity-relationship model. ACM Computing Surveys (CSUR) 18, 2 (1986), 197–222.
[223]
A. H. ter Hofstede and T. P. van der Weide. 1993. Expressiveness in conceptual data modelling. Data & Knowledge Engineering 10, 1 (1993), 65–100.
[224]
B. Ternes, K. Rosenthal, and S. Strecker. 2021. Automated assistance for data modelers combining natural language processing and data modeling heuristics: A prototype demonstration. In ER Demos/Posters co-located with 40th International Conference on Conceptual Modeling (ER 2021).
[225]
B. Ternes, K. Rosenthal, and S. Strecker. 2021. Automated assistance for data modelers: A heuristics-based natural language processing approach. In European Conference on Information Systems. 2021, 1–10.
[226]
H. Topi and V. Ramesh. 2002. Human factors research on data modeling: A review of prior research, an extended framework and future research directions. Journal of Database Management (JDM) 13, 2 (2002), 3–19.
[227]
A. Tversky. 1977. Features of similarity. Psychological Review 84, 4 (1977), 327.
[228]
M. van Welie and G. C. van der Veer. 2003. Groupware task analysis. In Handbook of Cognitive Task Design. CRC Press. 447–476.
[229]
P. Varga et al. 2020. 5G support for industrial IoT applications—challenges, solutions, and research gaps. Sensors 20, 3 (2020), 828.
[230]
M. Verdonck, F. Gailly, and S. de Cesare. 2020. Comprehending 3D and 4D ontology-driven conceptual models: An empirical study. Information Systems 93 (2020), 101568.
[231]
S. Vijayarani, M. J. Ilamathi, and M. Nithya. 2015. Preprocessing techniques for text mining-an overview. International Journal of Computer Science & Communication Networks 5, 1 (2015), 7–16.
[232]
M. von der Beeck. 2003. A structured operational semantics for UML-statecharts. Software and Systems Modeling 1 (2003), 130–141.
[233]
G. Wagner, R. Lukyanenko, and G. Paré. 2022. Artificial intelligence and the conduct of literature reviews. Journal of Information Technology 37, 2 (2022), 209–226.
[234]
J. D. Wall, B. C. Stahl, and A. Salam. 2015. Critical discourse analysis as a review methodology: An empirical example. Communications of the Association for Information Systems 37, 1 (2015), 11.
[235]
Y. Wand and R. Weber. 1995. On the deep structure of information systems. Information Systems Journal 5, 3 (1995), 203–223.
[236]
Y. Wand and R. Weber. 2002. Research commentary: Information systems and conceptual modeling—a research agenda. Information Systems Research 13, 4 (2002), 363–376.
[237]
Y. Wang et al. 2020. Deep temporal multi-graph convolutional network for crime prediction. In Conceptual Modeling: 39th International Conference, ER 2020, Vienna, Austria, November 3–6, 2020, Proceedings 39. Springer.
[238]
D. G. Wastell, P. White, and P. Kawalek. 1994. A methodology for business process redesign: Experiences and issues. The Journal of Strategic Information Systems 3, 1 (1994), 23–40.
[239]
D. Westergaard et al. 2018. A comprehensive and quantitative comparison of text-mining in 15 million full-text articles versus their corresponding abstracts. PLoS Computational Biology 14, 2 (2018), e1005962.
[240]
R. Wieringa. 2011. Real-world semantics of conceptual models. The Evolution of Conceptual Modeling: From a Historical Perspective towards the Future of Conceptual Modeling. 1–20.
[241]
S. Wolny et al. 2020. Thirteen years of SysML: A systematic mapping study. Software and Systems Modeling 19 (2020), 111–169.
[242]
C. Woo. 2011. The role of conceptual modeling in managing and changing the business. In Conceptual Modeling–ER 2011: 30th International Conference, ER 2011, Brussels, Belgium, October 31-November 3, 2011. Proceedings 30. Springer.
[243]
B. Xiao and I. Benbasat. 2007. E-commerce product recommendation agents: Use, characteristics, and impact. MIS Quarterly (2007), 137–209.
[244]
J. W. Young Jr. and H. K. Kent. 1958. An abstract formulation of data processing problems. In Preprints of Papers presented at the 13th National Meeting of the Association for Computing Machinery.
[245]
E. S. Yu. 2009. Social Modeling and i. Conceptual Modeling: Foundations and Applications: Essays in Honor of John Mylopoulos (2009), 99–121.
[246]
G. Yuan and J. Lu. 2021. MORTAL: A tool of automatically designing relational storage schemas for multi-model data through reinforcement learning. arXiv preprint arXiv:2109.00136. 2021.
[247]
M. A. Zaidi. 2021. Conceptual modeling interacts with machine learning–A systematic literature review. In Computational Science and Its Applications–ICCSA 2021: 21st International Conference, Cagliari, Italy, September 13–16, 2021, Proceedings, Part IX 21. Springer.
[248]
C. Zaniolo and M. A. Meklanoff. 1981. On the design of relational database schemata. ACM Transactions on Database Systems (TODS) 6, 1 (1981), 1–47.
[249]
A. ZareRavasan and A. Jeyaraj. 2022. Evolution of information systems business value research: Topic modeling analysis. Journal of Computer Information Systems (2022), 1–19.
[250]
K. Zarour et al. 2020. A systematic literature review on BPMN extensions. Business Process Management Journal 26, 6 (2020), 1473–1503.
[251]
S. Zhou et al. 2021. A guided latent Dirichlet allocation approach to investigate real-time latent topics of Twitter data during Hurricane Laura. Journal of Information Science (2021). 01655515211007724.
[252]
A. Zolotas et al. 2020. Bridging proprietary modelling and open-source model management tools: The case of PTC Integrity Modeller and Epsilon. Software and Systems Modeling 19 (2020), 17–38.
[253]
M. Zur Muehlen and M. Indulska. 2010. Modeling languages for business processes and business rules: A representational analysis. Information Systems 35, 4 (2010), 379–390.

Cited By

View all
  • (2024)Implementation of RDBMS in Establishing a Digital Repository for Schizophyllum Commune (Kurakding) Regional KnowledgeAmerican Journal of Software Engineering and Applications10.11648/j.ajsea.20241201.1312:1(14-22)Online publication date: 24-May-2024
  • (2024)Guiding attention in flow-based conceptual models through consistent flow and pattern visibilityDecision Support Systems10.1016/j.dss.2024.114292(114292)Online publication date: Jul-2024
  • (2024)Unraveling the foundations and the evolution of conceptual modeling—Intellectual structure, current themes, and trajectoriesData & Knowledge Engineering10.1016/j.datak.2024.102351154(102351)Online publication date: Nov-2024
  • Show More Cited By

Index Terms

  1. Conceptual Modeling: Topics, Themes, and Technology Trends

      Recommendations

      Comments

      Information & Contributors

      Information

      Published In

      cover image ACM Computing Surveys
      ACM Computing Surveys  Volume 55, Issue 14s
      December 2023
      1355 pages
      ISSN:0360-0300
      EISSN:1557-7341
      DOI:10.1145/3606253
      Issue’s Table of Contents

      Publisher

      Association for Computing Machinery

      New York, NY, United States

      Publication History

      Published: 17 July 2023
      Online AM: 30 March 2023
      Accepted: 14 February 2023
      Revised: 31 January 2023
      Received: 21 June 2022
      Published in CSUR Volume 55, Issue 14s

      Permissions

      Request permissions for this article.

      Check for updates

      Author Tags

      1. Conceptual modeling
      2. digital world
      3. database
      4. information systems
      5. information technology
      6. structured literature review
      7. clustering analysis

      Qualifiers

      • Survey

      Funding Sources

      • Georgia State University
      • HEC Montréal, the McIntire School of Commerce
      • University of Virginia
      • Mason School of Business at William & Mary

      Contributors

      Other Metrics

      Bibliometrics & Citations

      Bibliometrics

      Article Metrics

      • Downloads (Last 12 months)609
      • Downloads (Last 6 weeks)55
      Reflects downloads up to 14 Oct 2024

      Other Metrics

      Citations

      Cited By

      View all
      • (2024)Implementation of RDBMS in Establishing a Digital Repository for Schizophyllum Commune (Kurakding) Regional KnowledgeAmerican Journal of Software Engineering and Applications10.11648/j.ajsea.20241201.1312:1(14-22)Online publication date: 24-May-2024
      • (2024)Guiding attention in flow-based conceptual models through consistent flow and pattern visibilityDecision Support Systems10.1016/j.dss.2024.114292(114292)Online publication date: Jul-2024
      • (2024)Unraveling the foundations and the evolution of conceptual modeling—Intellectual structure, current themes, and trajectoriesData & Knowledge Engineering10.1016/j.datak.2024.102351154(102351)Online publication date: Nov-2024
      • (2024)To prompt or not to prompt: Navigating the use of Large Language Models for integrating and modeling heterogeneous dataData & Knowledge Engineering10.1016/j.datak.2024.102313152(102313)Online publication date: Jul-2024
      • (2024)Universal conceptual modeling: principles, benefits, and an agenda for conceptual modeling researchSoftware and Systems Modeling10.1007/s10270-024-01207-823:5(1077-1100)Online publication date: 3-Sep-2024
      • (2023)Diagrams-as-Code for Conceptual Modeling in Computational Problem Solving2023 IEEE Symposium on Visual Languages and Human-Centric Computing (VL/HCC)10.1109/VL-HCC57772.2023.00041(239-241)Online publication date: 3-Oct-2023
      • (2023)Principles of Universal Conceptual ModelingEnterprise, Business-Process and Information Systems Modeling10.1007/978-3-031-34241-7_12(169-183)Online publication date: 31-May-2023

      View Options

      Get Access

      Login options

      Full Access

      View options

      PDF

      View or Download as a PDF file.

      PDF

      eReader

      View online with eReader.

      eReader

      Full Text

      View this article in Full Text.

      Full Text

      Media

      Figures

      Other

      Tables

      Share

      Share

      Share this Publication link

      Share on social media