AbstractWe propose and analyze a distribution learning algorithm for a subclass ofacyclic probalistic finite automata(APFA). This subclass is characterized by a certain distinguishability property of the automata's states. Though hardness results are known for learning distributions generated by general APFAs, we prove that our algorithm can efficiently learn distributions generated by the subclass of APFAs we consider. In particular, we show that the KL-divergence between the distribution generated by the target source and the distribution generated by our hypothesis can be made arbitrarily small with high confidence in polynomial time. We present two applications of our algorithm. In the first, we show how to model cursively written lette...
International audienceProbabilistic finite-state machines are used today in a variety of areas in pa...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
AbstractWe propose and analyze a distribution learning algorithm for a subclass ofacyclic probalisti...
We propose and analyze a distribution learning algorithm for a subclass of Acyclic Probabilistic Fin...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
We consider the problem of PAC-learning distributions over strings, represented by probabilistic det...
We consider the problem of PAC-learning distributions over strings, represented by probabilistic det...
AbstractWe consider the problem of PAC-learning distributions over strings, represented by probabili...
We review methods for inference of probability distributions generated by probabilistic automata and...
Probabilistic finite-state machines are used today in a variety of areas in pattern recognition, or ...
12International audienceProbabilistic finite-state machines are used today in a variety of areas in ...
12International audienceProbabilistic finite-state machines are used today in a variety of areas in ...
International audienceProbabilistic finite-state machines are used today in a variety of areas in pa...
International audienceProbabilistic finite-state machines are used today in a variety of areas in pa...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
AbstractWe propose and analyze a distribution learning algorithm for a subclass ofacyclic probalisti...
We propose and analyze a distribution learning algorithm for a subclass of Acyclic Probabilistic Fin...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
We consider the problem of PAC-learning distributions over strings, represented by probabilistic det...
We consider the problem of PAC-learning distributions over strings, represented by probabilistic det...
AbstractWe consider the problem of PAC-learning distributions over strings, represented by probabili...
We review methods for inference of probability distributions generated by probabilistic automata and...
Probabilistic finite-state machines are used today in a variety of areas in pattern recognition, or ...
12International audienceProbabilistic finite-state machines are used today in a variety of areas in ...
12International audienceProbabilistic finite-state machines are used today in a variety of areas in ...
International audienceProbabilistic finite-state machines are used today in a variety of areas in pa...
International audienceProbabilistic finite-state machines are used today in a variety of areas in pa...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...
Known algorithms for learning PDFA can only be shown to run in time polynomial in the so-called dis...