One approach to improve the accuracy of classifications based on generative models is to combine them with successful discriminative algorithms. (Fisher kernels) were developed to combine generative models with a currently very popular class of learning algorithms, kernel methods. Empirically, the combination of hidden Markov models with support vector machines has shown promising results. So far, however, Fisher kernels have only been considered for sequences over flat alphabets. This is mostly due to the lack of a method for computing the gradient of a generative model over structured sequences. In this paper, we show how to compute the gradient of logical hidden (Markov models), which allow for the modelling of logical sequences, i.e., s...
Logical hidden Markov models (LOHMMs) upgrade traditional hidden Markov models to deal with sequence...
This tutorial was one of eight tutorials selected to be presented at the Third International Confere...
Abstract Logical hidden Markov models (LOHMMs) upgrade traditional hidden Markov models to deal with...
Generative kernels represent theoretically grounded tools able to increase the capabilities of gener...
In this paper, we propose a discriminative counterpart of the directed Markov Models of order k - 1...
In this paper we show how the generation of documents can be thought of as a k-stage Markov process,...
Abstract. Generative kernels represent theoretically grounded tools able to increase the capabilitie...
Hidden Markov Models are a widely used generative model for analysing sequence data. A variant, Prof...
One of the most fundamental issues in computational biology is the classification of biological sequ...
This thesis studies the introduction of a priori structure into the design of learning systems based...
We introduce a general family of kernels based on weighted transducers or rational relations, ratio...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
A novel kernel design for biological sequence analysis are pre-sented in this paper, which introduce...
A mixture of Bayesian Network Classifiers(BNC) has a potential to yield superior classification and ...
Logical hidden Markov models (LOHMMs) upgrade traditional hidden Markov models to deal with sequence...
This tutorial was one of eight tutorials selected to be presented at the Third International Confere...
Abstract Logical hidden Markov models (LOHMMs) upgrade traditional hidden Markov models to deal with...
Generative kernels represent theoretically grounded tools able to increase the capabilities of gener...
In this paper, we propose a discriminative counterpart of the directed Markov Models of order k - 1...
In this paper we show how the generation of documents can be thought of as a k-stage Markov process,...
Abstract. Generative kernels represent theoretically grounded tools able to increase the capabilitie...
Hidden Markov Models are a widely used generative model for analysing sequence data. A variant, Prof...
One of the most fundamental issues in computational biology is the classification of biological sequ...
This thesis studies the introduction of a priori structure into the design of learning systems based...
We introduce a general family of kernels based on weighted transducers or rational relations, ratio...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
Recently, Jaakkola and Haussler (1999) proposed a method for constructing kernel functions from prob...
A novel kernel design for biological sequence analysis are pre-sented in this paper, which introduce...
A mixture of Bayesian Network Classifiers(BNC) has a potential to yield superior classification and ...
Logical hidden Markov models (LOHMMs) upgrade traditional hidden Markov models to deal with sequence...
This tutorial was one of eight tutorials selected to be presented at the Third International Confere...
Abstract Logical hidden Markov models (LOHMMs) upgrade traditional hidden Markov models to deal with...