The theory of probability is widely used in biomedical research for data analysis and modelling. In previous work the probabilities of the research hypotheses have been recorded as experimental metadata. The ontology HELO is designed to support probabilistic reasoning, and provides semantic descriptors for reporting on research that involves operations with probabilities. HELO explicitly links research statements such as hypotheses, models, laws, conclusions, etc. to the associated probabilities of these statements being true. HELO enables the explicit semantic representation and accurate recording of probabilities in hypotheses, as well as the inference methods used to generate and update those hypotheses. We demonstrate the utility of HE...
International audienceBackground: Biomedical ontologies aim at providing the most exhaustive and rig...
We apply the distribution semantics for probabilistic ontologies (named DISPONTE) to the Datalog+/- ...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
This article is available through the Brunel Open Access Publishing Fund. Copyright © 2013 Soldatova...
Although probabilistic knowledge representations and probabilistic reasoning have by now secured the...
Statistical analysis requires understanding the nature of the phenomenon under study, as well as und...
Rules represent knowledge about the world that can be used for reasoning. However, the world is inhe...
Probabilistic logic programs [4] combine the power of a pro- gramming language with a possible world...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Abstract. Building a probabilistic network for a real-life domain of application is a hard and time-...
Abstract. Although probabilistic knowledge representations and probabilistic reasoning have by now s...
In logic programming the distribution semantics is one of the most popular approaches for dealing wi...
Abstract. Building a probabilistic network for a real-life domain of ap-plication is a hard and time...
We present DISPONTE, a semantics for probabilistic ontolo- gies that is based on the distribution s...
Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models ...
International audienceBackground: Biomedical ontologies aim at providing the most exhaustive and rig...
We apply the distribution semantics for probabilistic ontologies (named DISPONTE) to the Datalog+/- ...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
This article is available through the Brunel Open Access Publishing Fund. Copyright © 2013 Soldatova...
Although probabilistic knowledge representations and probabilistic reasoning have by now secured the...
Statistical analysis requires understanding the nature of the phenomenon under study, as well as und...
Rules represent knowledge about the world that can be used for reasoning. However, the world is inhe...
Probabilistic logic programs [4] combine the power of a pro- gramming language with a possible world...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Abstract. Building a probabilistic network for a real-life domain of application is a hard and time-...
Abstract. Although probabilistic knowledge representations and probabilistic reasoning have by now s...
In logic programming the distribution semantics is one of the most popular approaches for dealing wi...
Abstract. Building a probabilistic network for a real-life domain of ap-plication is a hard and time...
We present DISPONTE, a semantics for probabilistic ontolo- gies that is based on the distribution s...
Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models ...
International audienceBackground: Biomedical ontologies aim at providing the most exhaustive and rig...
We apply the distribution semantics for probabilistic ontologies (named DISPONTE) to the Datalog+/- ...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...