Improving Coherence of Topic Based Aspect Clusters using Domain Knowledge

Autores/as

  • Kavita Sanjay Asnani Goa University, Department of Computer Science and Technology
  • Jyoti D Pawar Goa University, Department of Computer Science and Technology

DOI:

https://doi.org/10.13053/cys-22-4-2401

Palabras clave:

Topic-based Aspect Extraction, Aspect Filtering, Aspect Coherence, Lexical Resource BabelNet, Context Domain Knowledge

Resumen

Web is loaded with opinion data belonging to multiple domains. Probabilistic topic models suchas Probabilistic Latent Semantic Analysis (pLSA) and Latent Dirichlet Allocation (LDA) have been popularly used to obtain thematic representations called topic based aspects from the opinion data. These topic-based aspects are then clustered to obtain semantically related groups, by algorithms such as Automated Knowledge LDA (AKL). However, there are two mains hortcomings with these algorithms namely the cluster of topics obtained sometimes lack coherence to accurately represent relevant aspects in the cluster and the popularor common words which are referred to as the generic topics are found to occur across clusters in different domains. In this paper we have used context domain knowledge from a publicly available lexical resource to increase the coherence of topic-based aspect clustersand discriminate domain-specific semantically relevant topical aspects from generic aspects shared across the domains. BabelNet was used as the lexical resource. The dataset comprised of product reviews from 36 product domains, containing 1000 reviews from each domain and 14 clusters per domain. Also, frequent topical aspects across topic clusters indicate occurrence of generic aspects. The average elimination of incoherent aspects was found to be 28.84%. The trend generated by UMass metric shows improved topic coherence and also better cluster quality is obtained as the average entropy without eliminated values was 0.876 and with elimination was 0.906.

Biografía del autor/a

Kavita Sanjay Asnani, Goa University, Department of Computer Science and Technology

Department of Computer Science and Techhnology

Jyoti D Pawar, Goa University, Department of Computer Science and Technology

Department of Computer Science and Techhnology

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Publicado

2018-12-30