Abstract
Resolving semantic heterogeneity is one of the major research challenges involved in many fields of study, such as, natural language processing, search engine development, document clustering, geospatial information retrieval, knowledge discovery, etc. When semantic heterogeneity is often considered as an obstacle for realizing full interoperability among diverse datasets, proper quantification of semantic similarity is another challenge to measure the extent of association between two qualitative concepts. The proposed work addresses this issue for any geospatial application where spatial land-cover distribution is crucial to model. Most of the these applications such as: prediction, change detection, land-cover classification, etc. often require to examine the land-cover distribution of the terrain. This paper presents an ontology-based approach to measure semantic similarity between spatial land-cover classes. As land-cover distribution is a qualitative information of a terrain, it is challenging to measure their extent of similarity among each other pragmatically. Here, an ontology is considered as the concept hierarchy of different land-cover classes which is built using domain experts’ knowledge. This work can be considered as the spatial extension of our earlier work presented in [1]. The similarity metric proposed in [1] is utilized here for spatial concepts. A case study with real land-cover ontology is presented to quantify the semantic similarity between every pair of land-covers with semantic hierarchy based similarity measurement (SHSM) scheme [1]. This work may facilitate quantification of semantic knowledge of the terrain for other spatial analyses as well.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Bhattacharjee S, Ghosh SK (2015) Measurement of semantic similarity: a concept hierarchy based approach. In: Proceedings of 3rd international conference on advanced computing, networking and informatics. Springer, New Delhi, pp 407–416
Markines B, Cattuto C, Menczer F, Benz D, Hotho A, Stumme G (2009) Evaluating similarity measures for emergent semantics of social tagging. In: Proceedings of the 18th international conference on World wide Web, ACM, pp 641–650
Markines B, Menczer F (2009) A scalable, collaborative similarity measure for social annotation systems. In: Proceedings of the 20th ACM conference on hypertext and hypermedia, ACM, pp 347–348
Ganesan P, Garcia-Molina H, Widom J (2003) Exploiting hierarchical domain structure to compute similarity. ACM Trans Info Syst TOIS 21(1):64–93
Paul M, Ghosh SK (2012) A framework for semantic interoperability for distributed geospatial repositories. Comput Info 27(1):73–92
Miller GA (1995) WordNet: a lexical database for English. Commun ACM 38(11):39–41
Jannink JF (2001) A word nexus for systematic interoperation of semantically heterogeneous data sources. PhD thesis, Stanford university
Krumhansl CL (1978) Concerning the applicability of geometric models to similarity data: the interrelationship between similarity and spatial density
Hahn U, Chater N, Richardson LB (2003) Similarity as transformation. Cognition 87(1):1–32
Resnik P (1995) Using information content to evaluate semantic similarity in a taxonomy. arXiv:cmp-lg/9511007 (preprint)
Cilibrasi RL, Vitanyi PM (2007) The Google similarity distance. IEEE Trans Knowl Data Eng 19(3):370–383
Bhattacharjee S, Dwivedi A, Prasad RR, Ghosh SK (2012) Ontology based spatial clustering framework for implicit knowledge discovery. In: India Conference (INDICON), 2012 Annual IEEE, IEEE, pp 561–566
Bhattacharjee S, Prasad RR, Dwivedi A, Dasgupta A, Ghosh SK (2012) Ontology based framework for semantic resolution of geospatial query. In: 2012 12th international conference onintelligent systems design and applications (ISDA), IEEE, pp 437–442
Mendiratta N, Kumar RS, Rao KS (2008) Standards for bio-geo database. Technical report 1, natural resources data management system (NRDMS) Division, New Delhi, India
Cimiano P, Handschuh S, Staab S (2004) Towards the self-annotating web. In: Proceedings of the 13th international conference on World Wide Web, ACM, pp 462–471
P Mika (2005) Ontologies are us: A unified model of social networks and semantics. In: The Semantic Web–ISWC. Springer, pp 522–536
Matsuo Y, Mori J, Hamasaki M, Nishimura T, Takeda H, Hasida K, Ishizuka M (2007) Polyphonet: an advanced social network extraction system from the web. Web semantics: science, services and agents on the World Wide Web 5(4):262–278
Mori J, Ishizuka M, Matsuo Y (2007) Extracting keyphrases to represent relations in social networks from Web. IJCAI 7:2820–2827
Bhattacharjee S, Mitra P, Ghosh SK (2014) Spatial interpolation to predict missing attributes in GIS using semantic kriging. IEEE Trans Geosci Remote Sens 52(8):4771–4780
Patil S, Bhattacharjee S, Ghosh SK (2014) A spatial web crawler for discovering geo-servers and semantic referencing with spatial features. In: Distributed Computing and Internet Technology. Springer International Publishing, pp 68–78
Bhattacharjee S, Ghosh SK (2015) Spatio-temporal change modeling of LULC: a semantic kriging approach. ISPRS Ann Photogram Remote Sens Spatial Info Sci 1:177–184
Lin D (1998) Automatic retrieval and clustering of similar words (1998) In: Proceedings of the 36th annual meeting of the association for computational linguistics and 17th international conference on computational linguistics-volume 2, association for computational linguistics, pp 768–774
Jiang JJ, Conrath DW (1997) Semantic similarity based on corpus statistics and lexical taxonomy. arXiv:cmp-lg/9709008 (preprint)
Lin D (1998) An information-theoretic definition of similarity. ICML 98:296–304
Rada R, Mili H, Bicknell E, Blettner M (1989) Development and application of a metric on semantic nets. IEEE Trans Syst Man Cybernet 19(1):17–30
Li Y, Bandar ZA, McLean D (2003) An approach for measuring semantic similarity between words using multiple information sources. IEEE Trans Knowl Data Eng 15(4):871–882
Li M, Chen X, Li X, Ma B, Vitányi PM (2004) The similarity metric. IEEE Trans Info Theory 50(12):3250–3264
Rodríguez MA, Egenhofer MJ, Rugg RD (1999) Assessing semantic similarities among geospatial feature class definitions. In: Interoperating Geographic Information Systems. Springer, pp 189–202
Rodriguez M, Egenhofer M (2003) Determining semantic similarity among entity classes from different ontologies. IEEE Trans Knowl Data Eng 15(2):442–456
Schwering A (2008) Approaches to semantic similarity measurement for geo-spatial data: a survey. Trans GIS 12(1):5–29
Li W, Raskin R, Goodchild MF (2012) Semantic similarity measurement based on knowledge mining: an artificial neural net approach. Int J Geogr Info Sci 26(8):1415–1435
Al-Bakri M, Fairbairn D (2012) Assessing similarity matching for possible integration of feature classifications of geospatial data from official and informal sources. Int J Geogr Info Sci 26(8):1437–1456
Bhattacharjee S, Ghosh SK (2015) Performance evaluation of semantic kriging: a Euclidean vector analysis approach. Geosci Remote Sens Lett IEEE 12(6):1185–1189
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Bhattacharjee, S., Ghosh, S.K. Measuring semantic similarity between land-cover classes for spatial analysis: an ontology hierarchy exploration approach. Innovations Syst Softw Eng 12, 193–200 (2016). https://doi.org/10.1007/s11334-016-0276-8
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11334-016-0276-8