Abstract
This paper presents a brief review of interval-based hypothesis testing, widely used in bio-statistics, medical science, and psychology, namely, tests for minimum-effect, equivalence, and non-inferiority. We present the methods in the contexts of a one-sample t-test and a test for linear restrictions in a regression. We present applications in testing for market efficiency, validity of asset-pricing models, and persistence of economic time series. We argue that, from the point of view of economics and finance, interval-based hypothesis testing provides more sensible inferential outcomes than those based on point-null hypothesis. We propose that interval-based tests be routinely employed in empirical research in business, as an alternative to point null hypothesis testing, especially in the new era of big data.
Subject
Economics and Econometrics
Reference73 articles.
1. Decision theory and the choice of a level of significance for the t-test;Arrow,1960
2. Publication Bias in Recent Empirical Accounting Research, Working Paperhttp://ssrn.com/abstract=2379889
3. Testing a Point Null Hypothesis: The Irreconcilability of P Values and Evidence
4. Beta and Return
5. Science and Statistics
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