人工知能学会第二種研究会資料
Online ISSN : 2436-5556
潜在トピック空間上でのマルチタスク学習による企業評価テキストデータを用いた財務指標予測
茂庭 綾香中川 雄太江口 浩二
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研究報告書・技術報告書 フリー

2018 年 2018 巻 FIN-020 号 p. 82-

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This paper aims to predict a company's financial index by analyzing articles about the company. The authors propose MultiMedLDA, which is one of supervised topic models. MultiMedLDA assumes that each document has two types of labels, discrete value label and continuous one. It models relation between each document and these labels, and predicts an unknown label based on known labels and the documents. Making use of not only documents but also the known labels, it improves prediction accuracy. We evaluated our model with data from the "Japan Company Handbook". Using comments for each company as a document, the type of industry as a discrete value label and the company's ROE (Return On Equity) as a continuous value label, we predicted the ROE in the evaluation.

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