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Master's Dissertation
DOI
https://doi.org/10.11606/D.3.2018.tde-27022018-090821
Document
Author
Full name
Francisco Henrique Otte Vieira de Faria
E-mail
Institute/School/College
Knowledge Area
Date of Defense
Published
São Paulo, 2017
Supervisor
Committee
Cozman, Fabio Gagliardi (President)
Appel, Ana Paula
Finger, Marcelo
Title in English
Learning acyclic probabilistic logic programs from data.
Keywords in English
Explainable AI
Machine learning
Probabilistic logic programming
Abstract in English
To learn a probabilistic logic program is to find a set of probabilistic rules that best fits some data, in order to explain how attributes relate to one another and to predict the occurrence of new instantiations of these attributes. In this work, we focus on acyclic programs, because in this case the meaning of the program is quite transparent and easy to grasp. We propose that the learning process for a probabilistic acyclic logic program should be guided by a scoring function imported from the literature on Bayesian network learning. We suggest novel techniques that lead to orders of magnitude improvements in the current state-of-art represented by the ProbLog package. In addition, we present novel techniques for learning the structure of acyclic probabilistic logic programs.
Title in Portuguese
Aprendizado de programas lógico-probabilísticos acíclicos.
Keywords in Portuguese
Aprendizado computacional
Programação lógica
Abstract in Portuguese
O aprendizado de um programa lógico probabilístico consiste em encontrar um conjunto de regras lógico-probabilísticas que melhor se adequem aos dados, a fim de explicar de que forma estão relacionados os atributos observados e predizer a ocorrência de novas instanciações destes atributos. Neste trabalho focamos em programas acíclicos, cujo significado é bastante claro e fácil de interpretar. Propõe-se que o processo de aprendizado de programas lógicos probabilísticos acíclicos deve ser guiado por funções de avaliação importadas da literatura de aprendizado de redes Bayesianas. Neste trabalho s~ao sugeridas novas técnicas para aprendizado de parâmetros que contribuem para uma melhora significativa na eficiência computacional do estado da arte representado pelo pacote ProbLog. Além disto, apresentamos novas técnicas para aprendizado da estrutura de programas lógicos probabilísticos acíclicos.
 
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Publishing Date
2018-02-27
 
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