Explaining Financial Uncertainty through Specialized Word Embeddings

Kilian Theil, Sanja Štajner, H. Stuckenschmidt
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引用次数: 8

Abstract

The detection of vague, speculative, or otherwise uncertain language has been performed in the encyclopedic, political, and scientific domains yet left relatively untouched in finance. However, the latter benefits from public sources of big financial data that can be linked with extracted measures of linguistic uncertainty as a mean of extrinsic model validation. Doing so further helps in understanding how the linguistic uncertainty of financial disclosures might induce financial uncertainty to the market. To explore this field, we use term weighting methods to detect linguistic uncertainty in a large dataset of financial disclosures. As a baseline, we use an existing dictionary of financial uncertainty triggers; furthermore, we retrieve related terms in specialized word embedding models to automatically expand this dictionary. Apart from an industry-agnostic expansion, we create expansions incorporating industry-specific jargon. In a set of cross-sectional event study regressions, we show that the such enriched dictionary explains a significantly larger share of future volatility, a common financial uncertainty measure, than before. Furthermore, we show that—different to the plain dictionary—our embedding models are well suited to explain future analyst forecast uncertainty. Notably, our results indicate that enriching the dictionary with industry-specific vocabulary explains a significantly larger share of financial uncertainty than an industry-agnostic expansion.
通过专业词嵌入解释金融不确定性
对模糊、推测或其他不确定语言的检测已经在百科全书、政治和科学领域进行了,但在金融领域却相对未被触及。然而,后者受益于大金融数据的公共来源,这些数据可以与语言不确定性的提取措施联系起来,作为外部模型验证的平均值。这样做进一步有助于理解财务披露的语言不确定性如何可能给市场带来财务不确定性。为了探索这一领域,我们使用术语加权方法来检测大型财务披露数据集中的语言不确定性。作为基准,我们使用现有的金融不确定性触发因素字典;此外,我们在专门的词嵌入模型中检索相关术语,以自动扩展该词典。除了与行业无关的扩展之外,我们还创建了包含行业特定术语的扩展。在一组横断面事件研究回归中,我们表明,这种丰富的词典解释了比以前更大的未来波动性,这是一种常见的金融不确定性指标。此外,我们表明,与普通字典不同,我们的嵌入模型非常适合解释未来分析师预测的不确定性。值得注意的是,我们的研究结果表明,与行业无关的扩展相比,用行业特定词汇丰富词典可以解释更大比例的财务不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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