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  1. Classifying proportionality - identification of a legal argument.Kilian Lüders & Bent Stohlmann - forthcoming - Artificial Intelligence and Law:1-28.
    Proportionality is a central and globally spread argumentation technique in public law. This article provides a conceptual introduction to proportionality and argues that such a domain-specific form of argumentation is particularly interesting for argument mining. As a major contribution of this article, we share a new dataset for which proportionality has been annotated. The dataset consists of 300 German Federal Constitutional Court decisions annotated at the sentence level (54,929 sentences). In addition to separating textual parts, a fine-grained system of proportionality (...)
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  • Using AI to detect panic buying and improve products distribution amid pandemic.Yossiri Adulyasak, Omar Benomar, Ahmed Chaouachi, Maxime C. Cohen & Warut Khern-Am-Nuai - 2024 - AI and Society 39 (4):2099-2128.
    The COVID-19 pandemic has triggered panic-buying behavior around the globe. As a result, many essential supplies were consistently out-of-stock at common point-of-sale locations. Even though most retailers were aware of this problem, they were caught off guard and are still lacking the technical capabilities to address this issue. The primary objective of this paper is to develop a framework that can systematically alleviate this issue by leveraging AI models and techniques. We exploit both internal and external data sources and show (...)
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  • Identifying arbitrage opportunities in retail markets with artificial intelligence.Jitsama Tanlamai, Warut Khern-Am-Nuai & Yossiri Adulyasak - 2024 - AI and Society 39 (5):2615-2630.
    This study uses an artificial intelligence (AI) model to identify arbitrage opportunities in the retail marketplace. Specifically, we develop an AI model to predict the optimal purchasing point based on the price movement of products in the market. Our model is trained on a large dataset collected from an online marketplace in the United States. Our model is enhanced by incorporating user-generated content (UGC), which is empirically proven to be significantly informative. Overall, the AI model attains more than 90% precision (...)
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