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Measuring Abnormal Bond Performance

机译:测量异常粘结性能

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We analyze the empirical power and specification of test statistics designed to detect abnormal bond returns in corporate event studies, using monthly and daily data. We find that test statistics based on frequently used methods of calculating abnormal monthly bond returns are biased. Most methods implemented in monthly data also lack power to detect abnormal returns. We also consider unique issues arising when using the newly available daily bond data, and formulate and test methods to calculate daily abnormal bond returns. Using daily bond data significantly increases the power of the tests, relative to the monthly data. Weighting individual trades by size while eliminating noninstitutional trades from the TRACE data also increases the power of the tests to detect abnormal performance, relative to using all trades or the last price of the day. Further, value-weighted portfolio-matching approaches are better specified and more powerful than equal-weighted approaches. Finally, we examine abnormal bond returns to acquirers around mergers and acquisitions to demonstrate how the abnormal return model and use of daily versus monthly data can affect inferences.
机译:我们使用月度和每日数据分析旨在检测公司事件研究中异常债券收益的测试统计数据的经验能力和规格。我们发现基于用于计算异常月度债券收益率的常用方法的测试统计数据存在偏差。在月度数据中实施的大多数方法也缺乏检测异常收益的能力。我们还考虑使用新近可用的每日债券数据时出现的独特问题,并制定和测试方法来计算每日异常债券收益。相对于每月数据,使用每日债券数据显着提高了测试的功能。相对于使用所有交易或当天的最后价格,通过按大小对单个交易加权,同时从TRACE数据中消除非机构交易也可以提高测试检测异常表现的能力。此外,价值加权投资组合匹配方法比同等加权方法具有更好的规范和功能。最后,我们研究了在合并和收购过程中向购并方带来的异常债券收益,以证明异常收益模型以及每日和每月数据的使用如何影响推论。

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