人工知能学会全国大会論文集
Online ISSN : 2758-7347
37th (2023)
セッションID: 1U5-IS-2b-04
会議情報

Improving Financial Terminologies Recognition regarding Morphological Inflection
*Ziwei XURungsiman NARARATWONGNatthawut KERTKEIDKACHORNRyutaro ICHISE
著者情報
キーワード: transformer, morphology, finance
会議録・要旨集 フリー

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Recognizing financial terminologies from text is essential for key information retrieval and content understanding. In general, financial terminologies do not appear in single-token form but are composed of several tokens. Also, in terminologies, a proper name might have diverse expressions, like abbreviations and morphological inflection, which sacrifice the recognition performance on recall. In this paper, along with transformer-based language models, i.e. XLM-Roberta, we propose a mechanism to train the neural classifier to distinguish terminologies from plain text, by learning from the sequential tags of targeting tokens. Initially, the targeting tokens are from a list of terminologies. To involve the diverse expressions, we inventively generate different morphologies of terminologies and utilize them to extend the targeting tokens. The experiments' results prove that this mechanism shows a convincing improvement in identifying financial terms from plain text.

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© 2023 The Japanese Society for Artificial Intelligence
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