2024年度 人工知能学会全国大会(第38回)

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国際セッション » IS-2 Machine learning

[3Q1-IS-2a] Machine learning

2024年5月30日(木) 09:00 〜 10:40 Q会場 (402会議室)

座長:打矢 隆弘(名古屋工業大学)

09:40 〜 10:00

[3Q1-IS-2a-03] Classifying and Extracting Information from Promotions for Demand Forecasting Using Topic Modelling with BERTopic.

〇Yingsha Yang1, Kazuhiro Koike1, Yasuyuki Mitsui1 (1. ASKUL Corporation)

キーワード:Topic Modelling, BERTopic, Promotions

In the e-commerce industry, sales promotions significantly influence demand. Extracting essential information from promotions, such as promotion type, duration, discount rate, target customers, and product categories, is a crucial factor of feature engineering for demand forecasting. However, promotional information is usually stored in text format, making it challenging to extract essential information for generating features. In this paper, we leverage the topic model BERTopic, which is robust in context analysis, to appropriately classify each promotion and extract necessary information for promotion feature generation based on the classification's topic. We conducted experiments on past data of a major Japanese e-commerce company. The result shows this method can achieve better performance compared to existing topic modelling baselines like LDA and NMF, and it was confirmed that relevant information for feature generation could be extracted based on the topics corresponding to each classification.

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