We present a method for approximating the semantics of probabilistic programs to the purpose of constructing semantics-based analyses of various properties. The method is also suited for a probabilistic analysis of classical deterministic programs. The framework resembles the one based on Galois connection used in abstract interpretation, the main difference being the choice of linear space structures instead of order-theoretic ones as semantical (concrete and abstract) domains. Linear spaces reflect the quantitative aspects of (probabilistic) computation and are therefore of fundamental importance in the semantics and the semantics-based analysis. The intrinsic quantitative nature of linear spaces makes the method suitable for investigatio...
AbstractThis paper presents two complementary but equivalent semantics for a high level probabilisti...
AbstractWhen modelling a complex system, such as one with distributed functionality, we need to choo...
Abstract. For a simple probabilistic language we present a semantics based on linear operators on in...
In order to perform probabilistic program analysis we need to consider probabilistic languages or la...
In order to perform probabilistic program analysis we need to consider probabilistic languages or la...
The aims of these lecture notes are two-fold: (i) we investigate the relation between the operationa...
AbstractWithin the context of a quantitative generalisation of the well established framework of Abs...
Within the context of a quantitative generalisation of the well established framework of Abstract In...
We show how the framework of probabilistic abstract interpretation can be applied to statically anal...
The weakest pre-expectation calculus [20] has been proved to be a mature theory to analyze quan-tita...
AbstractWe present a semantics-based technique for analysing probabilistic properties of imperative ...
We present a semantics-based technique for analysing probabilistic properties of imperative programs...
AbstractIn this paper we show how the framework of probabilistic abstract interpretation can be appl...
Abstraction is a fundamental tool for reasoning about a complex system. Program abstraction has been...
Probabilistic Abstract Interpretation is a framework for program analysis that allows us to accommod...
AbstractThis paper presents two complementary but equivalent semantics for a high level probabilisti...
AbstractWhen modelling a complex system, such as one with distributed functionality, we need to choo...
Abstract. For a simple probabilistic language we present a semantics based on linear operators on in...
In order to perform probabilistic program analysis we need to consider probabilistic languages or la...
In order to perform probabilistic program analysis we need to consider probabilistic languages or la...
The aims of these lecture notes are two-fold: (i) we investigate the relation between the operationa...
AbstractWithin the context of a quantitative generalisation of the well established framework of Abs...
Within the context of a quantitative generalisation of the well established framework of Abstract In...
We show how the framework of probabilistic abstract interpretation can be applied to statically anal...
The weakest pre-expectation calculus [20] has been proved to be a mature theory to analyze quan-tita...
AbstractWe present a semantics-based technique for analysing probabilistic properties of imperative ...
We present a semantics-based technique for analysing probabilistic properties of imperative programs...
AbstractIn this paper we show how the framework of probabilistic abstract interpretation can be appl...
Abstraction is a fundamental tool for reasoning about a complex system. Program abstraction has been...
Probabilistic Abstract Interpretation is a framework for program analysis that allows us to accommod...
AbstractThis paper presents two complementary but equivalent semantics for a high level probabilisti...
AbstractWhen modelling a complex system, such as one with distributed functionality, we need to choo...
Abstract. For a simple probabilistic language we present a semantics based on linear operators on in...