通过预测收益预测误差来完善金融分析师的预测

Tatiana Fedyk
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引用次数: 3

摘要

本文的目的是研究季度收益预测误差的序列相关性随公司和分析师属性(如公司的行业、分析师的经验和经纪公司的隶属关系)的变化方式。先前对金融分析师季度收益预测的研究已经证明了预测误差的序列相关性。发现预测误差的序列相关性是显著的,并且似乎独立于公司和分析师的属性,共识预测误差被建模为一个自回归过程。拟合数据的预测误差模型为AR(1),利用得到的自回归系数对一致性预测误差进行预测。本研究将共识预测误差建模为一个自回归过程,预测了未来的共识预测误差,并提出了一系列改进共识的方法。这些改进在以前的文献中没有提出,对金融分析师和投资者可能有用。
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Refining Financial Analysts’ Forecasts by Predicting Earnings Forecast Errors
Purpose The purpose of this paper is to examine the way serial correlation in quarterly earnings forecast errors varies with firm and analyst attributes such as the firm’s industry and the analyst’s experience and brokerage house affiliation. Prior research on financial analysts’ quarterly earnings forecasts has documented serial correlation in forecast errors. Design/methodology/approach Finding that serial correlation in forecast errors is significant and seemingly independent of firm and analyst attributes, the consensus forecast errors are modeled as an autoregressive process. The model of forecast errors that best fits the data is AR(1), and the obtained autoregressive coefficients are used to predict consensus forecast errors. Findings Modeling the consensus forecast errors as an autoregressive process, the present study predicts future consensus forecast errors and proposes a series of refinements to the consensus. Originality/value These refinements were not presented in prior literature and can be useful to financial analysts and investors.
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