I tackle the problem of partitioning a sequence into homogeneous segments, where homogeneity is defined by a set of Markov models. The problem is to study the likelihood that a sequence is divided into a given number of segments. Here, the moments of this likelihood are computed through an efficient algorithm. Unlike methods involving Hidden Markov Models, this algorithm does not require probability transitions between the models. Among many possible usages of the likelihood, I present a maximum \textit{a posteriori} probability criterion to predict the number of homogeneous segments into which a sequence can be divided, and an application of this method to find CpG islands
We are interested here in theoretical and practical approach for detecting atypical segments in a mu...
Hidden Markov models (HMMs) are a class of stochastic models that have proven to be powerful tools f...
Hidden Markov models were introduced in the beginning ofthe 1970's as a tool in speech recognition. ...
Our aim is to evaluate whether a sequence has a significant structure, by comparing its best segment...
Abstract. We introduce a novel generative probabilistic model for segmentation problems in molecular...
This thesis is devoted to the development of a new statistical model for segmentation/clustering pro...
This paper is concerned with statistical methods for the analysis of linear sequence data using Hidd...
We introduce Markov models for segmentation of symbolic sequences, extending a segmentation procedur...
The most commonly used models for analysing local dependencies in DNA sequences are (high-order) Mar...
Hidden Markov models (HMMs) are one of the most widely used statistical methods for analyzing se-que...
We present an unsupervised approach to cluster sequences. This method is inspired by topology learni...
Hidden Markov models (HMMs) are one of the most widely used statistical methods for analyzing sequen...
Approximate Bayesian Computation (ABC) is a powerful Monte Carlo approach to posterior distribution ...
This paper discusses a probabilistic model-based approach to clustering sequences, using hidden Mar...
O problema de segmentação de sequências tem o objetivo de particionar uma sequência ou um conjunto d...
We are interested here in theoretical and practical approach for detecting atypical segments in a mu...
Hidden Markov models (HMMs) are a class of stochastic models that have proven to be powerful tools f...
Hidden Markov models were introduced in the beginning ofthe 1970's as a tool in speech recognition. ...
Our aim is to evaluate whether a sequence has a significant structure, by comparing its best segment...
Abstract. We introduce a novel generative probabilistic model for segmentation problems in molecular...
This thesis is devoted to the development of a new statistical model for segmentation/clustering pro...
This paper is concerned with statistical methods for the analysis of linear sequence data using Hidd...
We introduce Markov models for segmentation of symbolic sequences, extending a segmentation procedur...
The most commonly used models for analysing local dependencies in DNA sequences are (high-order) Mar...
Hidden Markov models (HMMs) are one of the most widely used statistical methods for analyzing se-que...
We present an unsupervised approach to cluster sequences. This method is inspired by topology learni...
Hidden Markov models (HMMs) are one of the most widely used statistical methods for analyzing sequen...
Approximate Bayesian Computation (ABC) is a powerful Monte Carlo approach to posterior distribution ...
This paper discusses a probabilistic model-based approach to clustering sequences, using hidden Mar...
O problema de segmentação de sequências tem o objetivo de particionar uma sequência ou um conjunto d...
We are interested here in theoretical and practical approach for detecting atypical segments in a mu...
Hidden Markov models (HMMs) are a class of stochastic models that have proven to be powerful tools f...
Hidden Markov models were introduced in the beginning ofthe 1970's as a tool in speech recognition. ...