Density estimation in sequence space is a fundamental problem in machine learning that is of great importance in computational biology. Due to the discrete nature and large dimensionality of sequence space, how best to estimate such probability distributions from a sample of observed sequences remains unclear. One common strategy for addressing this problem is to estimate the probability distribution using maximum entropy, i.e. calculating point estimates for some set of correlations based on the observed sequences and predicting the probability distribution that is as uniform as possible while still matching these point estimates. Building on recent advances in Bayesian field-theoretic density estimation, we present a generalization of thi...
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...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
Density estimation in sequence space is a fundamental problem in machine learning that is also of gr...
This thesis studies the maximum entropy principle in statistical modelling. Applications are taken f...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Many of the same modeling methods used in natural languages, specifically Markov models and HMM\u27s...
The focus of this thesis is on developing methods of integrating heterogeneous biological feature se...
Many of the same modeling methods used in natural languages, specifically Markov models and HMM\u27s...
This is an author's peer-reviewed final manuscript, as accepted by the publisher. The published arti...
The paper proposes a new non-parametric density estimator from region-censored observations with app...
In high throughput applications, such as those found in bioinformatics and finance, it is important ...
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
We propose a framework for modeling sequence motifs based on the Maximum Entropy principle (MEP). We...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
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...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
Density estimation in sequence space is a fundamental problem in machine learning that is also of gr...
This thesis studies the maximum entropy principle in statistical modelling. Applications are taken f...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Many of the same modeling methods used in natural languages, specifically Markov models and HMM\u27s...
The focus of this thesis is on developing methods of integrating heterogeneous biological feature se...
Many of the same modeling methods used in natural languages, specifically Markov models and HMM\u27s...
This is an author's peer-reviewed final manuscript, as accepted by the publisher. The published arti...
The paper proposes a new non-parametric density estimator from region-censored observations with app...
In high throughput applications, such as those found in bioinformatics and finance, it is important ...
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
We propose a framework for modeling sequence motifs based on the Maximum Entropy principle (MEP). We...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
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...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...