Bayes in Wonderland! Predictive supervised classification inference hits unpredictability

12/03/2021
by   Ali Amiryousefi, et al.
0

The marginal Bayesian predictive classifiers (mBpc) as opposed to the simultaneous Bayesian predictive classifiers (sBpc), handle each data separately and hence tacitly assumes the independence of the observations. However, due to saturation in learning of generative model parameters, the adverse effect of this false assumption on the accuracy of mBpc tends to wear out in face of increasing amount of training data; guaranteeing the convergence of these two classifiers under de Finetti type of exchangeability. This result however, is far from trivial for the sequences generated under Partition exchangeability (PE), where even umpteen amount of training data is not ruling out the possibility of an unobserved outcome (Wonderland!). We provide a computational scheme that allows the generation of the sequences under PE. Based on that, with controlled increase of the training data, we show the convergence of the sBpc and mBpc. This underlies the use of simpler yet computationally more efficient marginal classifiers instead of simultaneous. We also provide a parameter estimation of the generative model giving rise to the partition exchangeable sequence as well as a testing paradigm for the equality of this parameter across different samples. The package for Bayesian predictive supervised classifications, parameter estimation and hypothesis testing of the Ewens Sampling formula generative model is deposited on CRAN as PEkit package and free available from https://github.com/AmiryousefiLab/PEkit.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/02/2021

Bayesian supervised predictive classification and hypothesis testing toolkit for partition exchangeability

Bayesian supervised predictive classifiers, hypothesis testing, and para...
research
01/26/2021

Asymptotic Supervised Predictive Classifiers under Partition Exchangeability

The convergence of simultaneous and marginal predictive classifiers unde...
research
01/31/2014

Marginal and simultaneous predictive classification using stratified graphical models

An inductive probabilistic classification rule must generally obey the p...
research
03/18/2021

Inductive Inference in Supervised Classification

Inductive inference in supervised classification context constitutes to ...
research
12/15/2020

Bayes Meets Entailment and Prediction: Commonsense Reasoning with Non-monotonicity, Paraconsistency and Predictive Accuracy

The recent success of Bayesian methods in neuroscience and artificial in...
research
01/05/2018

RobustGaSP: Robust Gaussian Stochastic Process Emulation in R

Gaussian stochastic process (GaSP) emulation is a powerful tool for appr...
research
08/25/2017

Accurate parameter estimation for Bayesian Network Classifiers using Hierarchical Dirichlet Processes

This paper introduces a novel parameter estimation method for the probab...

Please sign up or login with your details

Forgot password? Click here to reset