Learning to Extract Cross-Domain Aspects and Understanding Sentiments Using Large Language Models
Karukriti Kaushik Ghosh, Chiranjib Sur

TL;DR
This paper explores the use of large language models for cross-domain aspect-based sentiment analysis, achieving high accuracy and providing a framework for applying sentiment analysis across different product domains.
Contribution
It introduces a framework leveraging large language models for effective cross-domain aspect-based sentiment analysis, demonstrating 92% accuracy on a standard dataset.
Findings
Achieved 92% accuracy on SemEval-2015 dataset
Demonstrated cross-domain applicability of LLMs for ABSA
Provided a scalable framework for aspect and sentiment extraction
Abstract
Aspect-based sentiment analysis (ASBA) is a refined approach to sentiment analysis that aims to extract and classify sentiments based on specific aspects or features of a product, service, or entity. Unlike traditional sentiment analysis, which assigns a general sentiment score to entire reviews or texts, ABSA focuses on breaking down the text into individual components or aspects (e.g., quality, price, service) and evaluating the sentiment towards each. This allows for a more granular level of understanding of customer opinions, enabling businesses to pinpoint specific areas of strength and improvement. The process involves several key steps, including aspect extraction, sentiment classification, and aspect-level sentiment aggregation for a review paragraph or any other form that the users have provided. ABSA has significant applications in areas such as product reviews, social media…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques
Methodstravel james
