Significance Testing Without Truth

Abstract

A popular approach to significance testing proposes to decide whether the given hypothesized statistical model is likely to be true (or false). Statistical decision theory provides a basis for this approach by requiring every significance test to make a decision about the truth of the hypothesis/model under consideration. Unfortunately, many interesting and useful models are obviously false (that is, not exactly true) even before considering any data. Fortunately, in practice a significance test need only gauge the consistency (or inconsistency) of the observed data with the assumed hypothesis/model -- without enquiring as to whether the assumption is likely to be true (or false), or whether some alternative is likely to be true (or false). In this practical formulation, a significance test rejects a hypothesis/model only if the observed data is highly improbable when calculating the probability while assuming the hypothesis being tested; the significance test only gauges whether the observed data likely invalidates the assumed hypothesis, and cannot decide that the assumption -- however unmistakably false -- is likely to be false a priori, without any data.

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Document Details

Document Type
Technical Report
Publication Date
Jul 27, 2012
Accession Number
ADA567455

Entities

People

  • Mark Tygert
  • Rachel Ward
  • William Perkins

Organizations

  • University of Texas at Austin

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  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Consistency
  • Data Analysis
  • Data Science
  • Discrete Distribution
  • Engineering
  • Estimators
  • Information Science
  • Numbers
  • Polynomials
  • Probability
  • Probability Distributions
  • Random Variables
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  • Statistical Algorithms
  • Statistical Inference
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