Generalized Maximum Entropy for Supervised Classification

07/10/2020
by   Santiago Mazuelas, et al.
0

The maximum entropy principle advocates to evaluate events' probabilities using a distribution that maximizes entropy among those that satisfy certain expectations' constraints. Such principle can be generalized for arbitrary decision problems where it corresponds to minimax approaches. This paper establishes a framework for supervised classification based on the generalized maximum entropy principle that leads to minimax risk classifiers (MRCs). We develop learning techniques that determine MRCs for general entropy functions and provide performance guarantees by means of convex optimization. In addition, we describe the relationship of the presented techniques with existing classification methods, and quantify MRCs performance in comparison with the proposed bounds and conventional methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/15/2022

IRL with Partial Observations using the Principle of Uncertain Maximum Entropy

The principle of maximum entropy is a broadly applicable technique for c...
research
04/07/2010

On Tsallis Entropy Bias and Generalized Maximum Entropy Models

In density estimation task, maximum entropy model (Maxent) can effective...
research
06/07/2016

A Minimax Approach to Supervised Learning

Given a task of predicting Y from X, a loss function L, and a set of pro...
research
03/18/2018

Adaptive prior probabilities via optimization of risk and entropy

An agent choosing between various actions tends to take the one with the...
research
05/31/2018

Minimax Learning for Remote Prediction

The classical problem of supervised learning is to infer an accurate pre...
research
12/22/2021

Entropic Herding

Herding is a deterministic algorithm used to generate data points that c...
research
08/04/2021

MRCpy: A Library for Minimax Risk Classifiers

Existing libraries for supervised classification implement techniques th...

Please sign up or login with your details

Forgot password? Click here to reset