A Novel Aspect Based Framework for Tourism Sector with Improvised Aspect and Opinion Mining Algorithm

Author:

Bhatnagar Vishal1,Goyal Mahima2,Hussain Mohammad Anayat2

Affiliation:

1. Department of Computer Science and Engineering, Ambedkar Institute of Advanced Communication Technologies and Research, New Delhi, India

2. Ambedkar Institute of Advanced Communication Technologies and Research, New Delhi, India

Abstract

With the growth of e-commerce web sites, the demand of writing reviews on these portals have gained huge popularity. This huge data must be mined to analyze the opinion and for making better decisions in different domains. In this paper, we have proposed an aspect based opinion mining algorithm for the tourism domain. It first determines the aspects, and then extracts the opinion words related to the aspects. The opinion words are provided a score based on the Senti-Wordnet and the final score of each aspect is calculated by the summation of the scores of the opinions. The final score is visualized depicting ranking of scores of different aspects for different hotels.

Publisher

IGI Global

Subject

General Medicine

Reference33 articles.

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1. Hybrid Ensemble Learning With Feature Selection for Sentiment Classification in Social Media;Research Anthology on Applying Social Networking Strategies to Classrooms and Libraries;2022-07-08

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3. Feature Selection by Associativity for Sentiment Analysis;Smart Computing Techniques and Applications;2021

4. Hybrid Ensemble Learning With Feature Selection for Sentiment Classification in Social Media;International Journal of Information Retrieval Research;2020-04

5. Aspect-based sentiment analysis of reviews in the domain of higher education;The Electronic Library;2020-02-03

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