CLJun 12, 2021

Every Bite Is an Experience: Key Point Analysis of Business Reviews

arXiv:2106.06758v1715 citations
Originality Incremental advance
AI Analysis

This work addresses the need for more comprehensive review summarization for businesses and consumers, offering an incremental improvement over existing methods.

The authors tackled the problem of summarizing business reviews by adapting Key Point Analysis (KPA) to provide both textual and quantitative summaries, introducing extensions like Collective Key Point Mining and sentiment integration, which substantially improved performance without domain-specific annotation.

Previous work on review summarization focused on measuring the sentiment toward the main aspects of the reviewed product or business, or on creating a textual summary. These approaches provide only a partial view of the data: aspect-based sentiment summaries lack sufficient explanation or justification for the aspect rating, while textual summaries do not quantify the significance of each element, and are not well-suited for representing conflicting views. Recently, Key Point Analysis (KPA) has been proposed as a summarization framework that provides both textual and quantitative summary of the main points in the data. We adapt KPA to review data by introducing Collective Key Point Mining for better key point extraction; integrating sentiment analysis into KPA; identifying good key point candidates for review summaries; and leveraging the massive amount of available reviews and their metadata. We show empirically that these novel extensions of KPA substantially improve its performance. We demonstrate that promising results can be achieved without any domain-specific annotation, while human supervision can lead to further improvement.

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