会计数据、高估和波动的横截面:行业证据

IF 3.3 Q1 BUSINESS, FINANCE
Omid Sabbaghi
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引用次数: 0

摘要

本研究旨在探讨估值过高的代理指标及波动率在不同行业和时间的变化。本研究使用标准普尔资本智商数据库中的行业数据,采用传统的横截面回归来研究2001-2020年期间高估与波动之间的关系。本研究发现,在横截面上,波动性最大的行业板块通常与估值过高的行业板块不重合,这意味着预测未来波动性的价格多元方法存在局限性。相反,本研究发现,在对行业部门横截面的波动率进行建模时,历史波动率显著增加了拟合优度。本研究的结果表明,企业应增加对企业行为的披露和透明度,以降低由坏消息引起的下行风险。此外,研究结果强调了在重大不确定性时期,市场效率与高波动性之间的一致性。原创性/价值本研究提出了一种新的方法来检验行业部门随时间波动的横截面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accounting data, overvaluation, and the cross-section of volatility: industry sector evidence
Purpose This study aims to investigate the variation in overvaluation proxies and volatility across industry sectors and time. Design/methodology/approach Using industry sector data from the S&P Capital IQ database, this study applies traditional cross-sectional regressions to investigate the relationship between overvaluation and volatility over the 2001–2020 time period. Findings This study finds that the most volatile industry sectors generally do not coincide with overvalued industry sectors in the cross-section, implying that there are limitations to price-multiple methods for forecasting future volatility. Rather, this study finds that historical volatility significantly increases the goodness-of-fit when modeling volatility in the cross section of industry sectors. The findings of this study imply that firms should increase disclosures and transparency about corporate practices to decrease downside risk that stems from bad news. In addition, the findings underline the consistency between market efficiency and high levels of volatility in periods of significant uncertainty. Originality/value This study proposes a novel approach to examining the cross section of volatility across time for industry sectors.
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来源期刊
CiteScore
5.80
自引率
16.00%
发文量
65
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