For many real-life Bayesian networks, common knowledge dictates that the output established for the main variable of interest increases with higher values for the observable variables. We define two concepts of monotonicity to capture this type of knowledge. We say that a network is isotone in distribution if the probability distribution computed for the output variable given specific observations is stochastically dominated by any such distribution given higher-ordered observations; a network is isotone in mode if a probability distribution given higher observations has a higher mode. We show that establishing whether a network exhibits any of these properties of monotonicity is coNPPP-complete in general, and remains coNP-complete for pol...
This paper is concerned with the class of distributions, continuous or discrete, whose shape is mono...
Determining the graph-theoretic properties of large real-world networks like social, computer, and b...
International audienceStochastic monotonicity is one of the sufficient conditions for stochastic com...
For many real-life Bayesian networks, common knowledge dictates that the output established for the ...
AbstractIn many realistic problem domains, the main variable of interest behaves monotonically in th...
In many real problem domains, the main variable of interest behaves monotonically in terms of the ob...
Abstract. It is often desirable that a probabilistic network is mono-tone, e.g., more severe symptom...
AbstractCheng, Greiner, Kelly, Bell and Liu [Artificial Intelligence 137 (2002) 43–90] describe an a...
Learning parameters of a probabilistic model is a necessary step in most machine learning modeling t...
Monotonicity is a constraint which arises in many application domains. We present a machine learning...
Abstract. Determining the graph-theoretic properties of large real-world networks like social, compu...
Monotonicity in Markov chains is the starting point for quantitative abstraction of complex probabil...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...
International audienceWe illustrate through examples how monotonicity may help for performance evalu...
We study bounds on the rate of convergence to the stationary distribution in monotone separable netw...
This paper is concerned with the class of distributions, continuous or discrete, whose shape is mono...
Determining the graph-theoretic properties of large real-world networks like social, computer, and b...
International audienceStochastic monotonicity is one of the sufficient conditions for stochastic com...
For many real-life Bayesian networks, common knowledge dictates that the output established for the ...
AbstractIn many realistic problem domains, the main variable of interest behaves monotonically in th...
In many real problem domains, the main variable of interest behaves monotonically in terms of the ob...
Abstract. It is often desirable that a probabilistic network is mono-tone, e.g., more severe symptom...
AbstractCheng, Greiner, Kelly, Bell and Liu [Artificial Intelligence 137 (2002) 43–90] describe an a...
Learning parameters of a probabilistic model is a necessary step in most machine learning modeling t...
Monotonicity is a constraint which arises in many application domains. We present a machine learning...
Abstract. Determining the graph-theoretic properties of large real-world networks like social, compu...
Monotonicity in Markov chains is the starting point for quantitative abstraction of complex probabil...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...
International audienceWe illustrate through examples how monotonicity may help for performance evalu...
We study bounds on the rate of convergence to the stationary distribution in monotone separable netw...
This paper is concerned with the class of distributions, continuous or discrete, whose shape is mono...
Determining the graph-theoretic properties of large real-world networks like social, computer, and b...
International audienceStochastic monotonicity is one of the sufficient conditions for stochastic com...