Back to Search Start Over

Opinion Texts Clustering Using Manifold Learning Based on Sentiment and Semantics Analysis

Authors :
Amir Masoud Eftekhari Moghadam
Fariborz Mahmoudi
Sajjad Jahanbakhsh Gudakahriz
Source :
Scientific Programming, Vol 2021 (2021)
Publication Year :
2021
Publisher :
Hindawi Limited, 2021.

Abstract

Nowadays, opinion texts are quickly published on websites and social networks by various users in the form of short texts and also in high volumes and various fields. Because these texts reflect the opinions of many users, their processing and analysis, such as clustering, can be very useful in a variety of applications including politics, industry, commerce, and economics. High dimensions of the text representation decrease efficiency of clustering, and an effective solution for this challenge is reducing dimensions of texts. Manifold learning is a powerful tool for nonlinear dimension reduction of high-dimensional data. Therefore, in this paper, for increasing efficiency of opinion texts clustering, by manifold learning, dimensions of the represented opinion texts are reduced based on sentiment and semantics, and their intrinsic dimensions are extracted. Then, the clustering algorithm is applied to dimension-reduced opinion texts. The proposed approach helps us to cluster opinion texts with simultaneous consideration of sentiment and semantics, which has received very little attention in the previous works. This type of clustering helps users of opinion texts to obtain more useful information from texts and also provides more accurate summaries in applications, such as the summarization of opinion texts. Experimental results on three datasets show better performance of the proposed approach on opinion texts in terms of important measures for evaluating clustering efficiency. An improvement of about 9% is observed in terms of accuracy on the third dataset and clustering based on sentiment and semantics.

Details

ISSN :
1875919X and 10589244
Volume :
2021
Database :
OpenAIRE
Journal :
Scientific Programming
Accession number :
edsair.doi.dedup.....10fa3342ac74f0e9b8d02d72410ede33
Full Text :
https://doi.org/10.1155/2021/7842631