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Use of semantic knowledge base for enhancement of coherence of code-mixed topic-based aspect clusters

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dc.contributor.author Asnani, K.
dc.contributor.author Pawar, J.D.
dc.date.accessioned 2017-03-08T04:32:00Z
dc.date.available 2017-03-08T04:32:00Z
dc.date.issued 2016
dc.identifier.citation Proc. 13. Int. Conference on Natural Language Processing, Ed. by: D.S. Sharma, R. Sangal and A.K. Singh. IIT, BHU, Varanasi. 2016; 259-266.
dc.identifier.uri http://ltrc.iiit.ac.in/icon2016/proceedings/icon2016/pdf/W16-6332.pdf
dc.identifier.uri http://irgu.unigoa.ac.in/drs/handle/unigoa/4700
dc.description.abstract In social media code-mixing is getting very popular due to which there is enormous generation of noisy and sparse multilingual text which exhibits high dispersion of useful topics which people discuss. Also, the semantics is expressed across random occurrence of code-mixed words. In this paper, we propose code-mixed knowledge based LDA (cmkLDA), which infers latent topic based aspects from code-mixed social media data. We experimented on FIRE 2014, a codemixed corpus and showed that with the help of semantic knowledge from multilingual external knowledge base, cmkLDA learns coherent topic-based aspects across languages and improves topic interpretibility and topic distinctiveness better than the baseline models . The same is shown to have agreed with human judgment.
dc.publisher NLP Association of India (NLPAI)
dc.subject Computer Science and Technology
dc.title Use of semantic knowledge base for enhancement of coherence of code-mixed topic-based aspect clusters
dc.type Conference article


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