分析师总体特征与预测绩效

Mark Wilson, Yi (Ava) Wu
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引用次数: 0

摘要

本文研究了分析师特征的综合衡量标准对于有兴趣解释分析师预测绩效差异的研究人员和投资者的优势。我们发现,虽然反映预测经验、资源获取和投资组合复杂性等属性的单一特征和基于因子的测量方法在解释分析师预测绩效的程度上存在显著差异,但基于单一特征或从这些特征中提取的因子的等权重综合测量方法与一系列盈利质量下降指标所产生的预测偏差具有一致性。这些分析师特征的综合衡量方法不需要传统档案来源以外的额外数据,为测试分析师特征对其预测绩效的影响提供了有用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aggregate analyst characteristics and forecasting performance
This paper examines the advantages of aggregate measures of analyst characteristics to researchers and investors interested in explaining differences in analysts' forecasting performance. We show while single‐characteristic and factor‐based measures reflecting attributes such as forecasting experience, access to resources and portfolio complexity vary significantly in the extent to which each explains analyst forecasting performance, equal‐weighted composite measures based on single characteristics or on factors extracted from those characteristics are consistently associated with forecasting bias arising from a range of indicators of reduced earnings quality. These aggregate measures of analyst characteristics require no additional data beyond traditional archival sources and offer a useful method of testing the impact of analyst characteristics on their forecasting performance.
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