We introduce a setting for learning possibilistic logic theories from defaults of the form “if alpha then typically beta”. We first analyse this problem from the point of view of machine learning theory, determining the VC dimension of possibilistic stratifications as well as the complexity of the associated learning problems, after which we present a heuristic learning algorithm that can easily scale to thousands of defaults. An important property of our approach is that it is inherently able to handle noisy and conflicting sets of defaults. Among others, this allows us to learn possibilistic logic theories from crowdsourced data and to approximate propositional Markov logic networks using heuristic MAP solvers. We present experimental res...
Probability density estimation from data is a widely studied problem. Often, the primary goal is to ...
The field of Statistical Relational Learning (SRL) is concerned with learning probabilistic models f...
First-order logic is the traditional basis for knowledge representation languages. However, its appl...
We introduce a setting for learning possibilistic logic theories from defaults of the form “if alpha...
We introduce a setting for learning possibilistic logic theories from defaults of the form “if alph...
Markov logic uses weighted formulas to compactly encode a probability distribution over possible wor...
Expert knowledge can often be represented using default rules of the form “if A then typically B”. I...
International audiencePossibilistic logic is a weighted logic that handles uncertain...
Studies in Computational Intelligence ; Series Editor : Kacprzyk, Janusz ; ISSN: 1860-949XInternatio...
Possibilistic logic is a logic for reasoning with uncertain and partially inconsistent knowledge bas...
Markov logic uses weighted formulas to com-pactly encode a probability distribution over pos-sible w...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Learning to reason and understand the world’s knowledge is a fundamental problem in Artificial Intel...
International audiencePossibilistic logic (PL) is more than thirty years old. The paper proposes a s...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
Probability density estimation from data is a widely studied problem. Often, the primary goal is to ...
The field of Statistical Relational Learning (SRL) is concerned with learning probabilistic models f...
First-order logic is the traditional basis for knowledge representation languages. However, its appl...
We introduce a setting for learning possibilistic logic theories from defaults of the form “if alpha...
We introduce a setting for learning possibilistic logic theories from defaults of the form “if alph...
Markov logic uses weighted formulas to compactly encode a probability distribution over possible wor...
Expert knowledge can often be represented using default rules of the form “if A then typically B”. I...
International audiencePossibilistic logic is a weighted logic that handles uncertain...
Studies in Computational Intelligence ; Series Editor : Kacprzyk, Janusz ; ISSN: 1860-949XInternatio...
Possibilistic logic is a logic for reasoning with uncertain and partially inconsistent knowledge bas...
Markov logic uses weighted formulas to com-pactly encode a probability distribution over pos-sible w...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Learning to reason and understand the world’s knowledge is a fundamental problem in Artificial Intel...
International audiencePossibilistic logic (PL) is more than thirty years old. The paper proposes a s...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
Probability density estimation from data is a widely studied problem. Often, the primary goal is to ...
The field of Statistical Relational Learning (SRL) is concerned with learning probabilistic models f...
First-order logic is the traditional basis for knowledge representation languages. However, its appl...