TASK COMPLEXITY, ANALYST EXPERTISE AND ACCURACY OF EARNINGS FORECASTS

Dipankar Ghosh, Lori Olsen

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

Abstract

Financial analysts’ forecasts serve as a proxy for market earnings expectations, and research provides mixed evidence of the relation between financial analysts’ expertise and forecast accuracy. The judgment and decision-making (J/DM) literature suggests that those with more expertise will not perform better when tasks exhibit either extremely high or extremely low complexity. Expertise is expected to contribute to superior performance for tasks between these two extremes. Using archival data, this research examines the effect of analysts’ expertise on forecasting performance by taking into consideration the forecasting task’s complexity. Results indicate that expertise is not an explanatory factor for forecast accuracy when the forecasting task’s complexity is extremely high or low. However, when task complexity falls between these two extremes, expertise is a significant explanatory variable of forecast accuracy. Both results are consistent with our expectations.

Original languageEnglish
Title of host publicationAdvances in Accounting Behavioral Research
PublisherEmerald Group Holdings Ltd.
Pages103-130
Number of pages28
DOIs
StatePublished - Aug 25 2022

Publication series

NameAdvances in Accounting Behavioral Research
Volume25
ISSN (Print)1475-1488

Keywords

  • Forecast accuracy
  • earnings forecast error
  • earnings forecasts
  • expertise
  • financial analysts
  • task complexity

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