Maximum entropy is a powerful concept that entails a sharp separation between relevant and irrelevant variables. It is typically invoked in inference, once an assumption is made on what the relevant variables are, in order to estimate a model from data, that affords predictions on all other (dependent) variables. Conversely, maximum entropy can be invoked to retrieve the relevant variables (sufficient statistics) directly from the data, once a model is identified by Bayesian model selection. We explore this approach in the case of spin models with interactions of arbitrary order, and we discuss how relevant interactions can be inferred. In this perspective, the dimensionality of the inference problem is not set by the number of parameters i...
We present a maximum entropy approach for inferring amino acid interactions in proteins subject to c...
We present a maximum entropy approach for inferring amino acid interactions in proteins subject to c...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy is a powerful concept that entails a sharp separation between relevant and irrelevan...
Maximum entropy-based inference methods have been successfully used to infer direct interactions fro...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Traditionally, the Maximum Entropy technique is used to select a probability distribution in situati...
We present a pedagogical discussion of the Maximum Entropy Method which is a precise and systematic ...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
We consider the problem of incomplete conditional probability tables in Bayesian nets, noting that m...
In this letter, we elaborate on some of the issues raised by a recent paper by Neapolitan and Jiang ...
The analysis of discrimination, feature and model selection conduct to the discussion of the relatio...
We present a maximum entropy approach for inferring amino acid interactions in proteins subject to c...
We present a maximum entropy approach for inferring amino acid interactions in proteins subject to c...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy is a powerful concept that entails a sharp separation between relevant and irrelevan...
Maximum entropy-based inference methods have been successfully used to infer direct interactions fro...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Traditionally, the Maximum Entropy technique is used to select a probability distribution in situati...
We present a pedagogical discussion of the Maximum Entropy Method which is a precise and systematic ...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
We consider the problem of incomplete conditional probability tables in Bayesian nets, noting that m...
In this letter, we elaborate on some of the issues raised by a recent paper by Neapolitan and Jiang ...
The analysis of discrimination, feature and model selection conduct to the discussion of the relatio...
We present a maximum entropy approach for inferring amino acid interactions in proteins subject to c...
We present a maximum entropy approach for inferring amino acid interactions in proteins subject to c...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...