A relational probability tree (RPT) is a type of decision tree that can be used for probabilistic classification of instances with a relational structure. Each leaf of an RPT contains a probability model that determines for each class the probability that an instance belongs to that class. The only kind of probability models that have been used in RPTs so far are multinomial probability distributions. In this paper we show how to integrate a more complex kind of probability models based on the concept of combining rules (such as noisy-or) into RPTs. We introduce two learning algorithms for such RPTs and experimentally compare these algorithms to the learning algorithm for standard RPTs. The experiments indicate that the use of probability...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
Relational learning refers to learning from data that have a complex structure. This structure may ...
A relational probability tree (RPT) is a type of decision tree that can be used for probabilistic cl...
Rule learning is known for its descriptive and therefore comprehensible classification models which ...
In the field of machine learning, methods for learning from single-table data have received much mor...
A recursive probability tree (RPT) is an incipient data structure for representing the distributions...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...
AbstractA Recursive Probability Tree (RPT) is a data structure for representing the potentials invol...
Probability Estimation Trees (PETs) try to estimate the probability with which an instance belongs t...
The tutorial will provide a motivation for, an overview of and an introduction to the fields of stat...
In the past few years there has been a lot of work lying at the intersection of probability theory, ...
The vast majority of real-world data is stored using relational representations. Unfortunately, many...
One of the goals of artificial intelligence is to develop agents that learn and act in complex envir...
Relational databases are a popular method for organizing and storing data. Unfortunately, many machi...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
Relational learning refers to learning from data that have a complex structure. This structure may ...
A relational probability tree (RPT) is a type of decision tree that can be used for probabilistic cl...
Rule learning is known for its descriptive and therefore comprehensible classification models which ...
In the field of machine learning, methods for learning from single-table data have received much mor...
A recursive probability tree (RPT) is an incipient data structure for representing the distributions...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...
AbstractA Recursive Probability Tree (RPT) is a data structure for representing the potentials invol...
Probability Estimation Trees (PETs) try to estimate the probability with which an instance belongs t...
The tutorial will provide a motivation for, an overview of and an introduction to the fields of stat...
In the past few years there has been a lot of work lying at the intersection of probability theory, ...
The vast majority of real-world data is stored using relational representations. Unfortunately, many...
One of the goals of artificial intelligence is to develop agents that learn and act in complex envir...
Relational databases are a popular method for organizing and storing data. Unfortunately, many machi...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
Relational learning refers to learning from data that have a complex structure. This structure may ...