We investigate algebraic, logical, and geometric properties of concepts recognized by various classes of probabilistic classifiers. For this we introduce a natural hierarchy of probabilistic classifiers, the lowest level of which comprises the naive Bayesian classifiers. We show that the expressivity of classifiers on the different levels in the hierarchy is characterized algebraically by separability with polynomials of different degrees. A consequence of this result is that every linearly separable concept can be recognized by a naive Bayesian classifier. We contrast this result with negative results about the naive Bayesian classifier previously reported in the literature, and point out that these results only pertain to specific learnin...
AbstractWe consider inclusion relations among a multitude of classical complexity classes and classe...
The existence of immune and simple sets in relativizations of the probabilistic polynomial time boun...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
We investigate algebraic, logical, and geometric properties of concepts recognized by various classe...
We investigate algebraic, logical, and geomet-ric properties of concepts recognized by vari-ous clas...
We study the discrimination functions associated with classifiers induced by probabilistic graphical...
We are concerned with probabilistic identification of indexed families of uniformly recursive langua...
In this paper we present an average-case analysis of the Bayesian classifier, a simple induction alg...
In this paper we present 1BC and 1BC2, two systems that perform naive Bayesian classification of str...
AbstractGeneral properties and proof techniques concerning probabilistic complexity classes are disc...
Many practical problems have random variables with a large number of values that can be hierarchical...
In this paper we investigate a new formal model of machine learning in which the concept (Boolean fu...
This paper argues that Bayesian probability theory is a general method for machine learning. From tw...
In a recent paper, the author has shown how Interaction Graphs models for linear logic can be used t...
We propose the structured naive Bayes (SNB) classifier, which augments the ubiquitous naive Bayes cl...
AbstractWe consider inclusion relations among a multitude of classical complexity classes and classe...
The existence of immune and simple sets in relativizations of the probabilistic polynomial time boun...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
We investigate algebraic, logical, and geometric properties of concepts recognized by various classe...
We investigate algebraic, logical, and geomet-ric properties of concepts recognized by vari-ous clas...
We study the discrimination functions associated with classifiers induced by probabilistic graphical...
We are concerned with probabilistic identification of indexed families of uniformly recursive langua...
In this paper we present an average-case analysis of the Bayesian classifier, a simple induction alg...
In this paper we present 1BC and 1BC2, two systems that perform naive Bayesian classification of str...
AbstractGeneral properties and proof techniques concerning probabilistic complexity classes are disc...
Many practical problems have random variables with a large number of values that can be hierarchical...
In this paper we investigate a new formal model of machine learning in which the concept (Boolean fu...
This paper argues that Bayesian probability theory is a general method for machine learning. From tw...
In a recent paper, the author has shown how Interaction Graphs models for linear logic can be used t...
We propose the structured naive Bayes (SNB) classifier, which augments the ubiquitous naive Bayes cl...
AbstractWe consider inclusion relations among a multitude of classical complexity classes and classe...
The existence of immune and simple sets in relativizations of the probabilistic polynomial time boun...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...