HS-ABSA: An Annotated Dataset for Aspect-Based Sentiment Analysis of Home Services Customer Reviews

Authors

DOI:

https://doi.org/10.22555/pjets.v13i2.1417

Keywords:

Dataset, Home Service Reviews, Aspect-Based Sentiment Analysis, Sentiment Analysis, Opinion Term, Aspect Category, Sentiment Polarity

Abstract

With the progression of new technologies, the explosive growth of user-generated content on online platforms has significantly fuelled interest in Aspect-Based Sentiment Analysis (ABSA) for both academic research and commercial applications. While existing ABSA research often utilizes publicly available product-oriented datasets such as those for laptops and cameras, there remains a scarcity of high-quality, publicly available datasets tailored for service-oriented domains. This gap highlights the need to develop new domain-specific resources that can effectively support the evaluation of ABSA models in real-world customer service contexts. In this paper, we present HS-ABSA, a new benchmark human-annotated dataset specifically curated for aspect-based sentiment analysis of home services customer feedback. The dataset was constructed by scraping reviews from the Google Play Store for a mobile app. The scraped reviews were carefully analysed, filtered, and manually annotated. The annotation process focused on opinion terms, aspect categories, and sentiment polarity. Inter-annotator agreement was measured using Kappa’s score. A total of 4,164 reviews were manually annotated. The inter-annotator agreement was calculated using Kohen’s kappa, and scores of 91.92% for opinion terms, 84.00% for aspect categories, and 94.38% for sentiment polarity were obtained. This newly curated ABSA Dataset for the service industry will provide a robust foundation for evaluating ABSA models.

Author Biographies

  • Afsheen Maroof, Air University

    Department of Computer Science

  • Shaukat Wasi, Mohammad Ali Jinnah University

    Dr. Shaukat Wasi received his PhD (CS) and MS (CS) degrees from FAST-National University of Computer and Emerging Sciences (NUCES) in 2015 and 2006 respectively. He did his Bachelors in Computer Science from University of Karachi in 2003. He started his teaching career at FAST-NUCES in 2005. He, then joined DHA Suffa University (DSU) as the founding teaching faculty. Currently he is engaged at Mohammad Ali Jinnah University (MAJU) as Associate Professor and the leading the Faculty of Computing as Associate Dean. Dr. Shaukat wasi has been working and interested to do research in HCI, IR, IE, Text Classification and Mining. He is also leading the research group “Intelligent and Interactive Natural Language Processing (IINLP)” initiated at Faculty of Computing, Mohammad Ali Jinnah University. Various projects are under progress at IINLP that mainly address problems in multilingual text and document processing with a focus on Human Factors.

References

Downloads

Published

2025-12-27

How to Cite

HS-ABSA: An Annotated Dataset for Aspect-Based Sentiment Analysis of Home Services Customer Reviews. (2025). Pakistan Journal of Engineering, Technology and Science, 13(2), 116-124. https://doi.org/10.22555/pjets.v13i2.1417

Similar Articles

31-40 of 53

You may also start an advanced similarity search for this article.