We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given the observed success probabilities of a set of queries, we compute the unobserved probabilities attached to facts that have a low approximation error on the training examples as well as on unseen examples. The objective function to be minimized is the squared-error between the measured and computed values of the queries. As we will show, our approach is able to learn both from queries and from proofs and even from both simultaneously. This makes it flexible and allows faster training in domains where proofs are available. Experiments on real world data show the usefulness and effectiveness of this least squares calibration of probabilistic datab...
The past few years have seen a surge of interest in the field of probabilistic logic learning and ...
Inference in probabilistic logic languages such as ProbLog, an extension of Prolog with probabilisti...
The past few years have seen a surge of interest in the field of probabilistic logic learning and st...
We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given the...
We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given th...
We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given the...
Probabilistic databases compute the success probabilities of queries. We introduce the problem of le...
One of the key challenges in artificial intelligence is the integration of machine learning, relatio...
We study how probabilistic reasoning and inductive querying can be combined within ProbLog, a recent...
ProbLog is a probabilistic extension of Prolog. Given the complexity of exact inference under ProbLo...
One of the key challenges in artificial intelligence is the integration of machine learning, relatio...
We study how probabilistic reasoning and inductive querying can be combined within ProbLog, a recent...
ProbLog is a recently introduced probabilistic extension of the logic programming language Prolog, i...
ProbLog is a probabilistic extension of Prolog. Given the complexity of exact inference under ProbLo...
We present ProbLog2, the state of the art implementation of the probabilistic programming language P...
The past few years have seen a surge of interest in the field of probabilistic logic learning and ...
Inference in probabilistic logic languages such as ProbLog, an extension of Prolog with probabilisti...
The past few years have seen a surge of interest in the field of probabilistic logic learning and st...
We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given the...
We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given th...
We introduce the problem of learning the parameters of the probabilistic database ProbLog. Given the...
Probabilistic databases compute the success probabilities of queries. We introduce the problem of le...
One of the key challenges in artificial intelligence is the integration of machine learning, relatio...
We study how probabilistic reasoning and inductive querying can be combined within ProbLog, a recent...
ProbLog is a probabilistic extension of Prolog. Given the complexity of exact inference under ProbLo...
One of the key challenges in artificial intelligence is the integration of machine learning, relatio...
We study how probabilistic reasoning and inductive querying can be combined within ProbLog, a recent...
ProbLog is a recently introduced probabilistic extension of the logic programming language Prolog, i...
ProbLog is a probabilistic extension of Prolog. Given the complexity of exact inference under ProbLo...
We present ProbLog2, the state of the art implementation of the probabilistic programming language P...
The past few years have seen a surge of interest in the field of probabilistic logic learning and ...
Inference in probabilistic logic languages such as ProbLog, an extension of Prolog with probabilisti...
The past few years have seen a surge of interest in the field of probabilistic logic learning and st...