Event Time

SSRN Pub Date : 2023-05-10 DOI:10.2139/ssrn.4101500
M. Czasonis, M. Kritzman, D. Turkington
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Abstract

Investors take for granted that returns are recorded in units of time, such as days, months, and years. Yet some time periods include unusual events that reasonably cause asset prices to change, whereas other periods are relatively free of unusual events, in which case returns mostly reflect noise. Based on insights from information theory, the authors rescale time into event units so that each return is related to a common degree of event intensity. Their analysis reveals that when returns are measured in event units, their distributions are more normal and their co-occurrences are more stable, which enables analysts to form more reliable inferences.
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事件时间
投资者理所当然地认为回报是以时间为单位记录的,例如天、月和年。然而,一些时间段包括合理导致资产价格变化的异常事件,而其他时间段则相对没有异常事件,在这种情况下,回报主要反映噪音。基于信息论的见解,作者将时间重新调整为事件单位,以便每次返回都与事件强度的共同程度有关。他们的分析表明,当回报以事件为单位衡量时,它们的分布更正常,同时发生的情况也更稳定,这使分析师能够形成更可靠的推断。
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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