FinTextSim: a domain-specific sentence-transformer for extracting predictive latent topics from financial disclosures
FinTextSim:財務開示から予測的な潜在トピックを抽出するためのドメイン固有文変換モデル (AI 翻訳)
Simon Jehnen, Javier Villalba-Díez, Joaquín B. Ordieres Meré
🤖 gxceed AI 要約
日本語
本研究は、財務開示テキストから予測的なトピックを抽出するためのドメイン特化型文変換モデルFinTextSimを提案する。S&P500企業の10-K報告書(2016-2023)を用いて評価した結果、BERTopicとFinTextSimの組み合わせが最も明確で財務的に関連性の高いトピッククラスタを生成し、予測性能も向上した。
English
This study proposes FinTextSim, a domain-specific sentence-transformer for extracting predictive latent topics from financial disclosures. Using 10-K filings of S&P 500 companies (2016-2023), BERTopic with FinTextSim yields clearer, more coherent financial topic clusters and improves corporate performance prediction by 2 percentage points in ROC-AUC and F1-score over a purely financial baseline.
Unofficial AI-generated summary based on the public title and abstract. Not an official translation.
📝 gxceed 編集解説 — Why this matters
日本のGX文脈において
日本企業の有報テキスト分析にも応用可能な手法だが、本論文はESG・気候関連開示を直接対象としていない。ただし、非構造化テキストを構造化表現に変換する枠組みは、SSBJ開示の分析に転用できる可能性がある。
In the global GX context
While not directly addressing climate or ESG disclosure, FinTextSim offers a methodology for converting unstructured financial text into structured representations that could be adapted for analyzing TCFD/ISSB reports. The domain-specific embedding approach demonstrates the value of fine-tuning on financial text, which may inform similar work in climate disclosure analysis.
👥 読者別の含意
🔬研究者:Researchers in NLP for finance can adopt FinTextSim for more coherent topic modeling and predictive feature extraction from disclosures.
🏢実務担当者:Corporate sustainability teams may find the methodology useful for extracting actionable insights from their own disclosures, but direct GX application requires further validation.
📄 Abstract(原文)
Recent advancements in information availability and computational capabilities have transformed the analysis of annual reports, integrating traditional financial metrics with insights from textual data. To extract actionable insights from this wealth of textual data, automated review processes, such as topic modeling, are essential. This study benchmarks classical approaches against contemporary neural techniques and introduces FinTextSim, a sentence-transformer finetuned for financial text. Using Item 7 and Item 7A of 10-K filings from S&P 500 companies (2016–2023), we systematically evaluate these models qualitatively and quantitatively. BERTopic in combination with FinTextSim consistently outperforms all alternatives, producing notably clearer, more coherent and financially relevant topic clusters. Compared to the most widely used standard embedding models and financial baselines, FinTextSim improves intratopic similarity by up to 71% and reduces intertopic similarity by more than 108%, highlighting the importance of domain-specific embeddings. Crucially, these qualitative gains translate into quantitative predictive benefits: incorporating FinTextSim-derived topic features into a logistic regression framework for corporate performance prediction leads to a statistically significant two-percentage-point increase in both ROC-AUC and F1-score over a purely financial baseline. In contrast, off-the-shelf sentence-transformers and classical topic models introduce noise that degrades predictive performance. For non-linear classifiers, several textual representations yield modest gains, reflecting their greater capacity to absorb noisier features. However, FinTextSim remains the most stable and consistently strong performer across both linear and non-linear settings. Overall, FinTextSim acts as a domain-adapted information filter, translating unstructured financial text into structured, semantically rich representations that human analysts and generic models often overlook. By bridging interpretability and predictive utility, it enables the extraction of economically relevant information from corporate narratives and supports more effective decision-making, resource allocation, and corporate performance forecasting.
🔗 Provenance — このレコードを発見したソース
- semanticscholar https://doi.org/10.3389/frai.2026.1752103first seen 2026-07-18 08:31:46
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