Learning programs with numerical values is fundamental to many AI applications, including bio-informatics and drug design. However, current program synthesis approaches struggle to learn programs with numerical values. An especially difficult problem is learning continuous values from multiple examples, such as intervals. To overcome this limitation, we introduce an inductive logic programming approach which combines relational learning with numerical reasoning. Our approach, which we call NumSynth, uses satisfiability modulo theories solvers to efficiently learn programs with numerical values. Our approach can identify numerical values in linear arithmetic fragments, such as real difference logic, and from infinite domains, such as real nu...
We introduce an inductive logic programming approach that combines classical divide-and-conquer sear...
The enormous rise in the scale, scope, and complexity of software projects has created a thriving ma...
© Springer-Verlag Berlin Heidelberg 1997. In practical applications of machine learning and knowledg...
Learning programs with numerical values is fundamental to many AI applications, including bio-inform...
. Despite the rapid emergence and success of Inductive Logic Programming, problems still surround nu...
Abstract. Program learning focuses on the automatic generation of programs satisfying the goal of a ...
A magic value in a program is a constant symbol that is essential for the execution of the program b...
Machine Learning systems are often distinguished according to the kind of representation they use, w...
AbstractUsing problem-specific background knowledge, computer programs developed within the framewor...
International audienceIn this talk, we suggest the idea of using algorithms inspired by Constraint P...
This paper addresses the problem of proving a given invariance property phi of a loop in a numeric p...
In \cite{BockmayrWeispfenning01}, we give an overview of solving numerical constraints in the contex...
A real number x is constructive if an algorithm can be given to compute arbitrarily accurate approxi...
The problem of synthesizing adequate inductive invariants to prove a program correct lies at the he...
. In practical applications of machine learning and knowledge discovery, handling multi-class proble...
We introduce an inductive logic programming approach that combines classical divide-and-conquer sear...
The enormous rise in the scale, scope, and complexity of software projects has created a thriving ma...
© Springer-Verlag Berlin Heidelberg 1997. In practical applications of machine learning and knowledg...
Learning programs with numerical values is fundamental to many AI applications, including bio-inform...
. Despite the rapid emergence and success of Inductive Logic Programming, problems still surround nu...
Abstract. Program learning focuses on the automatic generation of programs satisfying the goal of a ...
A magic value in a program is a constant symbol that is essential for the execution of the program b...
Machine Learning systems are often distinguished according to the kind of representation they use, w...
AbstractUsing problem-specific background knowledge, computer programs developed within the framewor...
International audienceIn this talk, we suggest the idea of using algorithms inspired by Constraint P...
This paper addresses the problem of proving a given invariance property phi of a loop in a numeric p...
In \cite{BockmayrWeispfenning01}, we give an overview of solving numerical constraints in the contex...
A real number x is constructive if an algorithm can be given to compute arbitrarily accurate approxi...
The problem of synthesizing adequate inductive invariants to prove a program correct lies at the he...
. In practical applications of machine learning and knowledge discovery, handling multi-class proble...
We introduce an inductive logic programming approach that combines classical divide-and-conquer sear...
The enormous rise in the scale, scope, and complexity of software projects has created a thriving ma...
© Springer-Verlag Berlin Heidelberg 1997. In practical applications of machine learning and knowledg...