Bharat Singh

Work place: School of Computing Science and Engineering, Galgotias University, India

E-mail: glabharat.mca@gmail.com

Website:

Research Interests: Computer systems and computational processes, Data Mining, Data Structures and Algorithms

Biography

Bharat Singh, did his MCA from GLA University, Mathura, India and M.Tech in Computer Science from Galgotias University, India in 2011 and 2015 respectively. His current research area includes Data Mining and Opinion mining.

Author Articles
Opinion based on Polarity and Clustering for Product Feature Extraction

By Sanjoy Das Bharat Singh Saroj Kushwah Prashant Johri

DOI: https://doi.org/10.5815/ijieeb.2016.05.05, Pub. Date: 8 Sep. 2016

In recent time, with the rapid development of web 2.0 the number of online user-generated review of product is increases very rapidly. It is very difficult for user to read all reviews and handle all websites to make a valuable decision at feature level. The feature level opinion mining has become very infeasible when people write same feature with contrary words or phrases. To produce a relevant feature based summary of domain synonyms words and phrase, need to be group into same feature group. In this work, we focus on feature based opinion mining and proposed a dynamic system for generate feature based summary of specific feature with specific polarity of opinion according to customer demand on periodic base and changed the summary after a span of period according to customer demand. First a method for feature (frequent and infrequent) extraction using the probabilistic approach at word-level. Second identify the corresponding opinion word and make feature-opinion pair. Third we designed an algorithm for final polarity detection of opinion. Finally, assigning the each feature-opinion pair into the respective feature based cluster (positive, negative or neutral) to generate the summary of specific feature with specific opinion on periodic base which are helpful for user. The experiment results show that our approach can achieves 96%accuracy in feature extraction and 92% accuracy in final polarity detection of feature-opinion pair in feature based summary generation task.

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Multi-Feature Segmentation and Cluster based Approach for Product Feature Categorization

By Bharat Singh Saroj Kushwah Sanjoy Das

DOI: https://doi.org/10.5815/ijitcs.2016.03.04, Pub. Date: 8 Mar. 2016

At a recent time, the web has become a valuable source of online consumer review however as the number of reviews is growing in high speed. It is infeasible for user to read all reviews to make a valuable or satisfying decision because the same features, people can write it contrary words or phrases. To produce a useful summary of domain synonyms words and phrase, need to be a group into same feature group. We focus on feature-based opinion mining problem and this paper mainly studies feature based product categorization from the number of users - generated review available on the different website. First, a multi-feature segmentation method is proposed which segment multi-feature review sentences into the single feature unit. Second part of speech dictionary and context information is used to consider the irrelevant feature identification, sentiment words are used to identify the polarity of feature and finally an unsupervised clustering based product feature categorization method is proposed. Clustering is unsupervised machine learning approach that groups feature that have a high degree of similarity in a same cluster. The proposed approach provides satisfactory results and can achieve 100% average precision for clustering based product feature categorization task. This approach can be applicable to different product.

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