著者
呂 良誠 許 俊杰 拜 亦名
出版者
一般社団法人 人工知能学会
雑誌
人工知能学会第二種研究会資料 (ISSN:24365556)
巻号頁・発行日
vol.2022, no.FIN-029, pp.39-46, 2022-10-08 (Released:2022-10-01)

This paper targets to predict overnight stock movement by taking contextualized news and stock information into account, using the Pre-trained Language Model (PLM) that was recently popular in Natural Language Processing (NLP) field. We proposed a model in which, given a piece of news and a stock code, the model can predict its overnight stock movement by utilizing combined news-stock embedding. Such embedding consists of (1) the contextualized embedding that contains the semantics of such a piece of news produced by a language model trained on a set of news and its paired stock movement. (2) The contextualized embedding is produced by a PLM trained on the information of stocks. Moreover, we introduce news augmentation on multiple pieces of news for the input and study its effect, respectively.

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こちらの研究です。 呂 良誠, 許 俊杰, 拜 亦名, ニュースと株の埋め込みを使ったオーバーナイト株価予測に向けて, 人工知能学会第二種研究会資料, 2022, 2022 巻, FIN-029 号, p. 39-46, 公開日 2022/10/01, Online ISSN 2436-5556, https://t.co/vyY1CtzLKG, 抄録: 2/5
【PDF論文】ニュースと株の埋め込みを使ったオーバーナイト株価予測 許 俊杰, 呂 良誠 , 拜 亦名, 2022 https://t.co/WtIWS3MskC

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