Abstract
This chapter is a review of literature on knowledge recommendation. It emphasises reviewer and expert recommendation, innovation support, and selected information extraction algorithms that are used to create individual profiles. The literature review is based on previous works of the author [62,63,64,65,66, 74, 107]. The information included in those works has been reinterpreted and supplemented with data found in the most recent publications.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Almuhanna AA, Yafooz WM (2021) Expert finding in scholarly data: An overview. In: 2021 IEEE international IOT, electronics and mechatronics conference (IEMTRONICS), pp 1–7
Veloso A, Ferreira AA, Goncalves MA, Laender AH, Meira Jr, W (2012) Cost-effective on-demand associative author name disambiguation. Inf Process Manag 48(4):680–697
Mostafavi A, Abraham DM, DeLaurentis D, Sinfield J (2011) Exploring the dimensions of systems of innovation analysis: A system of systems framework. IEEE Syst J 5(2):256–265
Ali Z, Qi G, Kefalas P, Abro WA, Ali B (2020) A graph-based taxonomy of citation recommendation models. Artif Intell Rev 53(7):5217–5260
Ali Z, Ullah I, Khan A, Ullah Jan A, Muhammad K (2021) An overview and evaluation of citation recommendation models. Scientometrics 126(5):4083–4119
Ali Z, Kefalas P, Muhammad K, Ali B, Imran M (2020) Deep learning in citation recommendation models survey. Expert Syst Appl 162
Ali Z, Qi G, Kefalas P, Khusro S, Khan I, Muhammad K (2022) SPR-SMN: scientific paper recommendation employing SPECTER with memory network. Scientometrics 127(11):6763–6785
Amini M-R, Goutte C (2010) A co-classification approach to learning from multilingual corpora. Mach Learn 79(1–2):105–121
Ferreira AA, Gonçalves MA, Laender AH (2012) A brief survey of automatic methods for author name disambiguation. ACM Sig Rec 41(2):15–26
Ryabokon A, Polleres A, Friedrich G, Falkner AA, Haselböck A, Schreiner H (2012) (re) configuration using web data: A case study on the reviewer assignment problem. In: International conference on web reasoning and rule systems. Springer, pp 258–261
Mountassir A, Benbrahim H, Berrada I (2012) An empirical study to address the problem of unbalanced data sets in sentiment classification. In: Systems, man, and cybernetics (SMC), 2012 IEEE international conference on, pp 3298–3303
Bai X, Wang M, Lee I, Yang Z, Kong X, Xia F (2019) Scientific paper recommendation: A survey. IEEE Access 7:9324–9339
Basu C, Hirsh H, Cohen WW (2001) Technical paper recommendation: A study in combining multiple information sources. J Artif Intell Res 14:231–252
Benaim M (2018) From symbolic values to symbolic innovation: Internet-memes and innovation. Res Policy 47(5):901–910
Bhimani H, Mention A-L, Barlatier P-J (2019) Social media and innovation: A systematic literature review and future research directions. Technol Forecast Soc Change 144:251–269
Aleman-Meza B, Bojārs U, Boley H, Breslin JG, Mochol M, Nixon LJ, Zhdanova AV (2007) Combining RDF vocabularies for expert finding. In: In proceedings of the 4th european semantic web conference (ESWC2007), number 4519 in Lecture Notes in Computer Science. Springer, pp 235–250
Aleman-Meza B, Hakimpour F, Arpinar IB, Sheth AP (2007) Swetodblp ontology of computer science publications. Web Semant: Sci Serv Agents World Wide Web 5(3):151–155
Bogers M, Chesbrough H, Moedas C (2018) Open innovation: Research, practices, and policies. California Manag Rev 60(2):5–16
Bresciani S, Ciampi F, Meli F, Ferraris A (2021) Using big data for co-innovation processes: Mapping the field of data-driven innovation, proposing theoretical developments and providing a research agenda. Int J Inf Manag 60:102347
Cagliero L, Garza P, Pasini A, Baralis E (2021) Additional reviewer assignment by means of weighted association rules. IEEE Trans Emer Top Comput 9(1):329–341
Çetin HA, Doğan E, Tüzün E (2021) A review of code reviewer recommendation studies: Challenges and future directions. Sci Comput Program 208
Chatzopoulos S, Vergoulis T, Dalamagas T, Tryfonopoulos C (2021) Veto-web: A recommendation tool for the expansion of sets of scholars. Proceedings of the ACM/IEEE joint conference on digital libraries 2021:334–335
Chen Y, Yuan H, Liu T, Ding N (2021) Name disambiguation based on graph convolutional network. Sci Programm 2021
Chien CF, Chen LF (2008) Data mining to improve personnel selection and enhance human capital: A case study in high-technology industry. Expert Syst Appl 34(1):280–290
Wei CP, Yang CC, Lin CM (2008) A latent semantic indexing-based approach to multilingual document clustering. Decis Support Syst 45(3):606–620
Choi J, Foster-Pegg B, Hensel J, Schaer O (2021) Using graph algorithms for skills gap analysis. In: IEEE systems and information engineering design symposium. SIEDS 2021
Chouchen M, Ouni A, Mkaouer MW, Kula RG, Inoue K (2021) WhoReview: A multi-objective search-based approach for code reviewers recommendation in modern code review. Appl Soft Comput 100
Schulz C, Mazloumian A, Petersen AM, Penner O, Helbing D (2014) Exploiting citation networks for large-scale author name disambiguation. EPJ Data Sci 3(1):1–14
Chuanming Y, Yunci Z, Aochen L, Lu A (2020) Author name disambiguation with network embedding. Data Anal Knowl Discovery 4(2–3):48–59
Lee CH, Yang HC (2009) Construction of supervised and unsupervised learning systems for multilingual text categorization. Expert Syst Appl 36(2, Part 1):2400–2410
Cook WD, Golany B, Kress M, Penn M, Raviv T (2005) Optimal allocation of proposals to reviewers to facilitate effective ranking. Manag Sci 51(4):655–661
Damljanovic D, Stankovic M, Laublet P (2012) Linked data-based concept recommendation: Comparison of different methods in open innovation scenario. In: Extended semantic web conference. Springer, pp 24–38
Danilov GV, Zhukov VV, Kulikov AS, Makashova ES, Mitin NA, Orlov YUN (2020) Comparative analysis of statistical methods of scientific publications classification in medicine. Comput Res Model 12(4):921–933
Hartvigsen D, Wei JC, Czuchlewski R (1999) The conference paper-reviewer assignment problem. Deci Sci 30(3):865–876
Pinto D, Civera J, Barrńn-Cedeno A, Juan A, Rosso P (2009) A statistical approach to crosslingual natural language tasks. J Algorithms 64(1):51–60
Dehghan M, Abin AA, Neshati M (2020) An improvement in the quality of expert finding in community question answering networks. Decis Support Syst 139
Dehghan M, Rahmani HA, Abin AA, Vu V-V (2020) Mining shape of expertise: A novel approach based on convolutional neural network. Inf Process Manag 57(4)
Tayal DK, Saxena PC, Sharma A, Khanna G, Gupta S (2014) New method for solving reviewer assignment problem using type-2 fuzzy sets and fuzzy functions. Appl Intell 40(1):54–73
Mishra D, Singh SK (2011) Taxonomy-based discovery of experts and collaboration networks. VSRD Int J Comput Sci Inf Technol I(10):698–710
Duan Z, Tan S, Zhao S, Wang Q, Chen J, Zhang Y (2019) Reviewer assignment based on sentence pair modeling. Neurocomputing 366:97–108
Du H, Kang YB (2021) An open-source framework for ExpFinder integrating n-gram vector space model and co-hits. Soft Impacts 8
Lakomaa E, Kallberg J (2013) Open data as a foundation for innovation: The enabling effect of free public sector information for entrepreneurs. IEEE Access 1:558–563
Fallahnejad Z, Beigy H (2022) Attention-based skill translation models for expert finding. Expert Syst Appl 193
Wang F, Zhou S, Shi N (2013) Group-to-group reviewer assignment problem. Comput Oper Res 40(5):1351–1362
Feng W, Zhu Q, Zhuang J, Yu S (2019) An expert recommendation algorithm based on pearson correlation coefficient and FP-growth. Cluster Comput 22:7401–7412
Schweitzer FM, Buchinger W, Gassmann O, Obrist M (2012) Crowdsourcing: Leveraging innovation through online idea competitions. Res Technol Manag 55(3):32–38
Flach PA, Spiegler S, Golénia B, Price S, Guiver J, Herbrich R, Zaki MJ (2010) Novel tools to streamline the conference review process: Experiences from SIGKDD’09. SIGKDD Explor Newsl 11(2):63–67
Huber F, Wainwright T, Rentocchini F (2020) Open data for open innovation: managing absorptive capacity in SMEs. R &D Manag 50(1):31–46
Goldsmith J, Sloan RH (2007) The AI conference paper assignment problem. In: In proceedings AAAI workshop on preference handling for artificial intelligence. Vancouver, pp 53–57
Green SM, Callaham ML (2011) Implementation of a journal peer reviewer stratification system based on quality and reliability. Ann Emer Med 57(2):149-152.e4
Gündoğan E, Kaya M (2022) A novel hybrid paper recommendation system using deep learning. Scientometrics 127(7):3837–3855
Wu H, Li B, Pei Y, He J (2014) Unsupervised author disambiguation using dempster-shafer theory. Scientometrics 101(3):1955–1972
He T, Guo C, Chu Y, Yang Y, Wang Y (2020) Dynamic user modeling for expert recommendation in community question answering. J Intell Fuzzy Syst 39(5):7281–7292
Hoang DT, Nguyen NT, Hwang D (2019) Decision support system for assignment of conference papers to reviewers. In: Lecture notes in computer science (including subseries lecture notes in artificial intelligence and lecture notes in bioinformatics), vol 11683. LNAI, pp 441–450
Hoang DT, Nguyen NT, Collins B, Hwang D (2021) Decision support system for solving reviewer assignment problem. Cybern Syst 52(5):379–397
Husain O, Salim N, Alias RA, Abdelsalam S, Hassan A (2019) Expert finding systems: A systematic review. Appl Sci (Switzerland) 9(20)
Hussain I, Asghar S (2017) A survey of author name disambiguation techniques: 2010–2016. Knowl Eng Rev 32
Immonen E, Putkonen A (2020) An heuristic algorithm for fair strategic personnel assignment in continuous operation. Int J Simul Proces Model 15(5):410–424
Bhattacharya I, Getoor L (2007) Collective entity resolution in relational data. ACM Trans Knowl Discovery Data 1(1):1–36
Tien JM (2015) An SMC perspective on big data: A disruptive innovation to embrace. IEEE Syst Man Cybern Mag 1(2):27–29
Recker J, Malsbender A, Kohlborn T (2016) Learning how to efficiently use enterprise social networks as innovation platforms. In: IT professional, number 2 in 18, pp 2–9
Protasiewicz J (2014) A support system for selection of reviewers. In: Systems, man and cybernetics (SMC), 2014 IEEE international conference on. IEEE, pp 3062–3065
Protasiewicz J (2017) Inventorum: A platform for open innovation. In: 2017 IEEE international conference on systems, man, and cybernetics (SMC). IEEE, pp 10–15
Protasiewicz J (2017) Inventorum–a recommendation system connecting business and academia. In: 2017 IEEE international conference on systems, man, and cybernetics (smc). IEEE, pp 1920–1925
Protasiewicz J, Pedrycz W, Kozłowski M, Dadas S, Stanisławek T, Kopacz A, Gałçżewska M (2016) A recommender system of reviewers and experts in reviewing problems. Knowle Based Syst 106:164–178
Protasiewicz J, Dadas S (2016) A hybrid knowledge-based framework for author name disambiguation. In: 2016 IEEE international conference on systems, man, and cybernetics (SMC). IEEE, pp 000594–000600
Jeong C, Jang S, Park E, Choi S (2020) A context-aware citation recommendation model with BERT and graph convolutional networks. Scientometrics 124(3):1907–1922
Zhu J, Yang Y, Xie Q, Wang L, Hassan SU (2014) Robust hybrid name disambiguation framework for large databases. Scientometrics 98(3):2255–2274
Jindal R, Malhotra R, Jain A (2015) Techniques for text classification: Literature review and current trends. Webology 12(2)
Jing C, Qiu L, Tian X, Hao T (2022) Publication classification prediction via citation attention fusion based on dynamic relations. Knowl Based Syst 239
Patroni J, Von Briel F, Recker J (2016) How enterprise social media can facilitate innovation. IT Prof 18(6):34–41
Merelo-Guervós JJ, Castillo-Valdivieso P (2004) Conference paper assignment using a combined greedy/evolutionary algorithm. In: International conference on parallel problem solving from nature. Springer, pp 602–611
Kilic K, Hamarat C (2010) A decision support system framework for innovation management. In: 2010 IEEE Int Conf Manag Innovation Technol 765–770
Kozlowski M, Protasiewicz J (2014) Automatic extraction of keywords from polish abstracts. In: 4th Young linguists’ meeting in Poznań, volume: book of abstracts, pp 56–57
Mirkovski K, Briel F, Lowry PB (2016) Social media use for open innovation initiatives: Proposing the semantic learning-based innovation framework (SLBIF). IT Prof 18(6):26–32
Ryu K, Shin J, Cho Y, Kim B, Choi H (2010) Web-based collaborative innovation systems for korean small and medium sized manufacturers. In: 2010 IEEE international technology management conference (ICE). IEEE, pp 1–8
Cen L, Dragut EC, Si L, Ouzzani M (2013) Author disambiguation by hierarchical agglomerative clustering with adaptive stopping criterion. In: Proceedings of the 36th international ACM SIGIR conference on research and development in information retrieval, pp 741–744
Li M, Li Y, Chen Y, Xu Y (2021) Batch recommendation of experts to questions in community-based question-answering with a sailfish optimizer. Expert Syst Appl 169
Liu X, Wang X, Zhu D (2022) Reviewer recommendation method for scientific research proposals: a case for NSFC. Scientometrics 127(6):3343–3366
Liu J, Deng A, Xie X, Xie Q (2022) ExpRec: Deep knowledge-awared question routing in software question answering community. Appl Intell 53(5):5681–5696
Liu P, Dew P (2004) Using semantic web technologies to improve expertise matching within academia. In: Proceedings of I-KNOW, Graz, Austria, pp 70–378
Bolikowski Ł, Dendek PJ (2011) Towards a flexible author name disambiguation framework. In: Towards a digital mathematics library. Masaryk Univ. Press, pp 27–37
Nakatsuji M, Yoshida M, Ishida T (2009) Detecting innovative topics based on user-interest ontology. J Web Semant 7(2):107–120
Suzuki M, Yamagishi N, Tsai YC, Hirasawa S (2008) Multilingual text categorization using character n-gram. In: IEEE conference on soft computing in industrial applications, pp 49–54
Nakatsuji M, Miyoshi Y, Otsuka Y (2006) Innovation detection based on user-interest ontology of blog community. In: International semantic web conference. Springer, pp 515–528
Mirończuk MM, Protasiewicz J (2018) A recent overview of the state-of-the-art elements of text classification. Expert Syst Appl 106:36–54
Mirończuk MM, Protasiewicz J (2020) Recognising innovative companies by using a diversified stacked generalisation method for website classification. Appl Intell 50(1):42–60
Mirończuk MM, Protasiewicz J (2015) A diversified classification committee for recognition of innovative internet domains. In: Beyond databases, architectures and structures. Advanced technologies for data mining and knowledge discovery. Springer, pp 368–383
Mirończuk MM, Perełkiewicz M, Protasiewicz J (2017) Detection of the innovative logotypes on the web pages. In: International conference on artificial intelligence and soft computing. Springer, pp 104–115
Piazza M, Mazzola E, Acur N, Perrone G (2019) Governance considerations for seeker-solver relationships: A knowledge-based perspective in crowdsourcing for innovation contests. British J Manag 30(4):810–828
Muninger MI, Hammedi W, Mahr D (2019) The value of social media for innovation: A capability perspective. J Bus Res 95:116–127
Rodriguez MA, Bollen J (2008) An algorithm to determine peer-reviewers. In: Proceedings of the 17th ACM conference on information and knowledge management, CIKM ’08, ACM, New York, NY, USA, pp 319–328
Ma S, Zhang C, Liu X (2020) A review of citation recommendation: from textual content to enriched context. Scientometrics
Mei X, Cai X, Xu S, Li W, Pan S, Yang L (2022) Mutually reinforced network embedding: An integrated approach to research paper recommendation. Expert Syst Appl 204
Levin M, Krawczyk S, Bethard S, Jurafsky D (2012) Citation-based bootstrapping for large-scale author disambiguation. J Am Soc Inf Sci Technol 63(5):1030–1047
Nadimi MH, Mosakhani M (2015) A more accurate clustering method by using co-author social networks for author name disambiguation. J Comput Secur 1(4):307–317
Montalvo S, Martinez R, Casillas A, Fresno V (2007) Multilingual news clustering: Feature translation vs. identification of cognate named entities. Pattern Recogn Lett 28(16):2305–2311
Smalheiser NR, Torvik VI (2009) Author name disambiguation. Ann Rev Inf Sci Technol 43(1):1–43
Nikzad-Khasmakhi N, Balafar MA, Feizi-Derakhshi MR (2019) The state-of-the-art in expert recommendation systems. Eng Appl Artif Intell 82:126–147
Patil AH, Mahalle PN (2019) Reviewer paper assignment problem–A brief review. River Publishers
Harper PR, de Senna V, Vieira IT, Shahani AK (2005) A genetic algorithm for the project assignment problem. Comput Oper Res 32(5):1255–1265
Zhang P, Xiong F, Leung H, Song W (2021) FunkR-pDAE: Personalized project recommendation using deep learning. IEEE Trans Emer Top Comput 9(2):886–900
Pintas JT, Fernandes LA, Garcia ACB (2021) Feature selection methods for text classification: a systematic literature review. Artif Intell Rev 54(8):6149–6200
Pooja K, Mondal S, Chandra J (2022) Exploiting higher order multi-dimensional relationships with self-attention for author name disambiguation. ACM Trans Knowl Discov Data 16(5):1–23
Pradhan DK, Chakraborty J, Choudhary P, Nandi S (2020) An automated conflict of interest based greedy approach for conference paper assignment system. J Inf 14(2)
Pradhan T, Sahoo S, Singh U, Pal S (2021) A proactive decision support system for reviewer recommendation in academia. Expert Syst Appl 169
Protasiewicz J, Stanisławek T, Dadas S (2015) Multilingual and hierarchical classification of large datasets of scientific publications. In: Systems, man, and cybernetics (SMC), 2015 IEEE international conference on. IEEE, pp 1670–1675
Tian Q, Ma J, Liu O (2002) A hybrid knowledge and model system for R &D project selection. Expert Syst Appl 39(3):265–271
Tian Q, Ma J, Liang J, Kwok RC, Liu O (2005) An organizational decision support system for effective & project selection. Decis Support Syst 39(3):403–413
Rodriguez MA, Johan B, de Sompel VH (2006) The convergence of digital-libraries and the peer-review process. J Inf Sci 32(2):149–159
Rogers D, Preece A, Innes M, Spasic I (2021) Real-time text classification of user-generated content on social media: Systematic review. IEEE Trans Comput Soc Syst 9(4):1154–1166
Roozbahani Z, Rezaeenour J, Emamgholizadeh H, Jalaly Bidgoly A (2020) A systematic survey on collaborator finding systems in scientific social networks. Knowl Inf Syst 62(10):3837–3879
Ruolin W, Zhendong N, Qika L, Yifan Z, Ping Q, Hao L, Donglei L (2021) Disambiguating author names with embedding heterogeneous information and attentive RNN clustering parameters. Data Anal Knowl Discov 5(8):13–24
Salinas M, Giorgi D, Ponchio F, Cignoni P (2020) ReviewerNet: A visualization platform for the selection of academic reviewers. Comput Graph (Pergamon) 89:77–87
Santini C, Gesese GA, Peroni S, Gangemi A, Sack H, Alam M (2022) A knowledge graph embeddings based approach for author name disambiguation using literals. Scientometrics 127(8):4887–4912
Sanyal DK, Bhowmick PK, Das PP (2021) A review of author name disambiguation techniques for the pubmed bibliographic database. J Inf Sci 47(2):227–254
Sharifian M, Abdolvand N, Harandi SR (2021) Context-based expert finding in online communities using ant colony algorithm. J Inf Syst Telecommun 8(30):130–139
Shen M, Wang J, Liu O, Wang H (2020) Expert detection and recommendation model with user-generated tags in collaborative tagging systems. J Database Manag 31(4):24–45
Lin S, Hong W, Wang D, Li T (2017) A survey on expert finding techniques. J Intell Inf Syst 49(2):255–279
Stelmakh I, Shah N, Singh A (2021) PeerReview4All: Fair and accurate reviewer assignment in peer review. J Mach Learn Res 22(1):7393–7458
Xinbo S, Mingchao Z, Weixin L, Mengqin H (2019) Research on the synergistic incentive mechanism of scientific research crowdsourcing network: Case study of InnoCentive. Manag Rev 31(5):277
Tan S, Duan Z, Zhao S, Chen J, Zhang Y (2021) Improved reviewer assignment based on both word and semantic features. Inf Retrieval J 24(3):175–204
Tang W, Lu T, Li D, Gu H, Gu N (2020) Hierarchical attentional factorization machines for expert recommendation in community question answering. IEEE Access 8:35331–35343
Tang W, Lu T, Gu H, Zhang P, Gu N (2020) Domain problem-solving expert identification in community question answering. Expert Syst 37(5)
Arif T, Ali R, Asger M (2015) A multistage hierarchical method for author name disambiguation. Int J Inf Process 9(3):92–105
Thangaraj M, Sivakami M (2018) Text classification techniques: A literature review. Interdisc J Inf Knowl Manag 13:117–135
Kolasa T, Król D (2011) A survey of algorithms for paper-reviewer assignment problem. IETE Tech Rev 28(2):123–134
Vignieri V (2021) Crowdsourcing as a mode of open innovation: Exploring drivers of success of a multisided platform through system dynamics modelling. Syst Res Behav Sci 38(1):108–124
Wang F, Shi N, Chen B (2010) A comprehensive survey of the reviewer assignment problem. Int J Inf Technol Decis Making 9(4):645–668
Wang F, Chen B, Miao Z (2008) A survey on reviewer assignment problem. In: Lecture notes in computer science (including subseries Lecture notes in artificial intelligence and lecture notes in bioinformatics), 5027 LNAI, pp 718–727
Liu W, Islamaj Doğan R, Kim S, Comeau DC, Kim W, Yeganova L, Lu Z, Wilbur WJ (2014) Author name disambiguation for pubmed. J Assoc Inf Sci Technol 65(4):765–781
Waqas H, Qadir MA (2021) Multilayer heuristics based clustering framework (MHCF) for author name disambiguation. Scientometrics 126(9):7637–7678
Wu H, Liu Y, Wang J (2020) Review of text classification methods on deep learning. Comput Mater Continua 63(3):1309–1321
Wang X, Huang C, Yao L, Benatallah B, Dong M (2018) A survey on expert recommendation in community question answering. J Comput Sci Technol 33(4):625–653
Song X, Tseng BL, Lin CY, Sun MT (2005) Expertisenet: Relational and evolutionary expert modeling. In: Liliana A, Paul B, Antonija M (eds) User modeling 2005, vol 3538. Lecture notes in computer science. Springer, Berlin, pp 99–108
Hu X, Zhang X, Lu C, Park EK, Zhou X (2009) Exploiting wikipedia as external knowledge for document clustering. In: Proceedings of the 15th ACM SIGKDD international conference on Knowledge discovery and data mining. ACM, pp 389–396
Xu Y, Zhou D, Ma J (2019) Scholar-friend recommendation in online academic communities: An approach based on heterogeneous network. Decis Support Syst 119:1–13
Xuefeng JIA, Cunbin LI, Ying Z (2022) An expert recommendation model to electric projects based on KG2E and collaborative filtering. Expert Syst Appl 198
Qian Y, Zheng Q, Sakai T, Ye J, Liu J (2015) Dynamic author name disambiguation for growing digital libraries. Inf Retrieval J 18(5):379–412
Yang C, Liu T, Yi W, Chen X, Niu B (2020) Identifying expertise through semantic modeling: A modified bbpso algorithm for the reviewer assignment problem. Appl Soft Comput J 94
Ye X, Zheng Y, Aljedaani W, Mkaouer MW (2021) Recommending pull request reviewers based on code changes. Soft Comput 25(7):5619–5632
Sun YH, Ma J, Fan ZP, Wang J (2008) A hybrid knowledge and model approach for reviewer assignment. Expert Syst Appl 34(2):817–824
Youneng P, Xiuli N (2020) Recommending online medical experts with Labeled-LDA model. Data Anal Knowl Discov 4(4):34–43
Yuan S, Zhang Y, Tang J, Hall W, Cabotà JB (2020) Expert finding in community question answering: a review. Artif Intell Rev 53(2):843–874
Xu Y, Ma J, Sun Y, Hao G, Xu W, Zhao D (2010) A decision support approach for assigning reviewers to proposals. Expert Syst Appl 37(10):6948–6956
Zhang S, Xinhua E, Pan T (2019) A multi-level author name disambiguation algorithm. IEEE Access 7:104250–104257
Zhang D, Zhao S, Duan Z, Chen J, Zhang Y, Tang J (2020) A multi-label classification method using a hierarchical and transparent representation for paper-reviewer recommendation. ACM Trans Inf Syst 38(1):1–20
Zhao X, Kang H, Feng T, Meng C, Nie Z (2020) A hybrid model based on LFM and BiGRU toward research paper recommendation. IEEE Access 8:188628–188640
Zhao Y, Anand A, Sharma G (2022) Reviewer recommendations using document vector embeddings and a publisher database: Implementation and evaluation. IEEE Access 10:21798–21811
Zhe S, Yi W, Yifan Y, Ying C (2020) Author name disambiguation techniques for academic literature: A review. Data Anal Knowl Discov 4(8):15–27
Yang Z, Liu Q, Sun B, Zhao X (2019) Expert recommendation in community question answering: a review and future direction. Int J Crowd Sci 3(3):348–372
Fan ZP, Chen Y, Ma J, Zhu Y (2009) Decision support for proposal grouping: A hybrid approach using knowledge rule and genetic algorithm. Expert Syst Appl 36(2, Part 1):1004–1013
Zulqarnain M, Ghazali R, Hassim YMM, Rehan M (2020) A comparative review on deep learning models for text classification. Indonesian J Electr Eng Comput Sci 19(1):325–335
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
Copyright information
© 2023 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this chapter
Cite this chapter
Protasiewicz, J. (2023). Literature Review. In: Knowledge Recommendation Systems with Machine Intelligence Algorithms. Studies in Computational Intelligence, vol 1101. Springer, Cham. https://doi.org/10.1007/978-3-031-32696-7_2
Download citation
DOI: https://doi.org/10.1007/978-3-031-32696-7_2
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-031-32695-0
Online ISBN: 978-3-031-32696-7
eBook Packages: Intelligent Technologies and RoboticsIntelligent Technologies and Robotics (R0)