Transportation sentiment analysis using word embedding and ontology-based topic modeling

  • Ali, Farman
  • Kwak, Daehan
  • Khan, Pervez
  • El-Sappagh, Shaker
  • Ali, Amjad
  • 외 3명
Citations

WEB OF SCIENCE

125
Citations

SCOPUS

171

초록

Social networks play a key role in providing a new approach to collecting information regarding mobility and transportation services. To study this information, sentiment analysis can make decent observations to support intelligent transportation systems (ITSs) in examining traffic control and management systems. However, sentiment analysis faces technical challenges: extracting meaningful information from social network platforms, and the transformation of extracted data into valuable information. In addition, accurate topic modeling and document representation are other challenging tasks in sentiment analysis. We propose an ontology and latent Dirichlet allocation (OLDA)-based topic modeling and word embedding approach for sentiment classification. The proposed system retrieves transportation content from social networks, removes irrelevant content to extract meaningful information, and generates topics and features from extracted data using OLDA. It also represents documents using word embedding techniques, and then employs lexicon-based approaches to enhance the accuracy of the word embedding model. The proposed ontology and the intelligent model are developed using Web Ontology Language and Java, respectively. Machine learning classifiers are used to evaluate the proposed word embedding system. The method achieves accuracy of 93%, which shows that the proposed approach is effective for sentiment classification. (C) 2019 Elsevier B.V. All rights reserved.

키워드

Social network analysisSentiment analysisTopic modelingMobility usersWord embeddingTWITTER
제목
Transportation sentiment analysis using word embedding and ontology-based topic modeling
저자
Ali, FarmanKwak, DaehanKhan, PervezEl-Sappagh, ShakerAli, AmjadUllah, SanaKim, Kye HyunKwak, Kyung-Sup
DOI
10.1016/j.knosys.2019.02.033
발행일
2019-06-15
유형
Article
저널명
Knowledge-Based Systems
174
페이지
27 ~ 42