A New Bayesian Test to test for the Intractability-Countering Hypothesis
Dalia Chakrabarty

TL;DR
This paper introduces a novel Bayesian hypothesis test designed to evaluate the intractability-countering null hypothesis by comparing marginalised posteriors, avoiding traditional Bayes factor limitations, and employing MCMC methods.
Contribution
The paper proposes a new Bayesian test that circumvents Bayes factor computation by using generated data and marginalised posteriors, improving inference for intractable models.
Findings
Supports hypothesis testing without Bayes factors
Uses generated data to assess null hypothesis support
Employs MCMC for posterior marginalisation
Abstract
We present a new test of hypothesis in which we seek the probability of the null conditioned on the data, where the null is a simplification undertaken to counter the intractability of the more complex model, that the simpler null model is nested within. With the more complex model rendered intractable, the null model uses a simplifying assumption that capacitates the learning of an unknown parameter vector given the data. Bayes factors are shown to be known only up to a ratio of unknown data-dependent constants--a problem that cannot be cured using prescriptions similar to those suggested to solve the problem caused to Bayes factor computation, by non-informative priors. Thus, a new test is needed in which we can circumvent Bayes factor computation. In this test, we undertake generation of data from the model in which the null hypothesis is true and can achieve support in the measured…
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Taxonomy
TopicsStatistical Methods and Inference · Statistical Methods and Bayesian Inference · Distributed Sensor Networks and Detection Algorithms
