The paper presents a scalable method for learning probabilistic real-time automata (PRTAs), a new type of model that captures the dynamics of multi-dimensional event logs. In multi-dimensional event logs, events are described by several features instead of only one symbol. Moreover, it is not clear up front which events occur in an event log. The learning method to find a PRTA that models such an event log is based on the state merging of a prefix tree acceptor, which is guided by a clustering to determine the states of the automaton. To make the overall approach scalable, an online clustering method based on maximum frequent patterns (MFPs) is used. The approach is evaluated on a synthetic, a biological and a medical data set. The results ...
Discovering and tracking of spatiotemporal patterns in noisy sequences of events are difficult tasks...
We adapt an algorithm (RTI) for identifying (learning) a deterministic real-time automaton (DRTA) to...
Markovian models with hidden state are widely-used formalisms for modeling sequential phenomena. Lea...
The probabilistic real-time automaton (PRTA) is a representation of dynamic processes arising in the...
The growing number of time-labeled datasets in science and industry increases the need for algorithm...
Statistical modeling of sequences is a central paradigm of machine learning that finds multiple uses...
International audienceApplications of probabilistic grammatical inference are limited due to time an...
We develop a novel learning algorithm RTI for identifying a deterministic real-time automaton (DRTA)...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
This article presents an overview of Probabilistic Automata (PA) and discrete Hidden Markov Models (...
Published version of an article from the book: Lecture Notes in Computer Science, 2010, Volume 6230/...
In this paper, we propose a way of incorporating additional knowledge in probabilistic automata infe...
International audienceModel-based clustering is a popular tool which is renowned for its probabilist...
Efficient learnability using the state merging algorithm is known for a subclass of probabilistic au...
The present thesis addresses several machine learning problems on generative and predictive models o...
Discovering and tracking of spatiotemporal patterns in noisy sequences of events are difficult tasks...
We adapt an algorithm (RTI) for identifying (learning) a deterministic real-time automaton (DRTA) to...
Markovian models with hidden state are widely-used formalisms for modeling sequential phenomena. Lea...
The probabilistic real-time automaton (PRTA) is a representation of dynamic processes arising in the...
The growing number of time-labeled datasets in science and industry increases the need for algorithm...
Statistical modeling of sequences is a central paradigm of machine learning that finds multiple uses...
International audienceApplications of probabilistic grammatical inference are limited due to time an...
We develop a novel learning algorithm RTI for identifying a deterministic real-time automaton (DRTA)...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
This article presents an overview of Probabilistic Automata (PA) and discrete Hidden Markov Models (...
Published version of an article from the book: Lecture Notes in Computer Science, 2010, Volume 6230/...
In this paper, we propose a way of incorporating additional knowledge in probabilistic automata infe...
International audienceModel-based clustering is a popular tool which is renowned for its probabilist...
Efficient learnability using the state merging algorithm is known for a subclass of probabilistic au...
The present thesis addresses several machine learning problems on generative and predictive models o...
Discovering and tracking of spatiotemporal patterns in noisy sequences of events are difficult tasks...
We adapt an algorithm (RTI) for identifying (learning) a deterministic real-time automaton (DRTA) to...
Markovian models with hidden state are widely-used formalisms for modeling sequential phenomena. Lea...