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Dive into the research topics where Teppo Mikael Niinimäki is active.

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Featured researches published by Teppo Mikael Niinimäki.


international joint conference on artificial intelligence | 2017

The Mixing of Markov Chains on Linear Extensions in Practice

Topi Talvitie; Teppo Mikael Niinimäki; Mikko Koivisto

We investigate almost uniform sampling from the set of linear extensions of a given partial order. The most efficient schemes stem from Markov chains whose mixing time bounds are polynomial, yet impractically large. We show that, on instances one encounters in practice, the actual mixing times can be much smaller than the worst-case bounds, and particularly so for a novel Markov chain we put forward. We circumvent the inherent hardness of estimating standard mixing times by introducing a refined notion, which admits estimation for moderate-size partial orders. Our empirical results suggest that the Markov chain approach to sample linear extensions can be made to scale well in practice, provided that the actual mixing times can be realized by instance-sensitive bounds or termination rules. Examples of the latter include existing perfect simulation algorithms, whose running times in our experiments follow the actual mixing times of certain chains, albeit with significant overhead.


international joint conference on artificial intelligence | 2013

Annealed importance sampling for structure learning in Bayesian networks

Teppo Mikael Niinimäki; Mikko Koivisto


uncertainty in artificial intelligence | 2011

Partial order MCMC for structure discovery in Bayesian networks

Teppo Mikael Niinimäki; Pekka Parviainen; Mikko Koivisto


neural information processing systems | 2014

Learning Chordal Markov Networks by Dynamic Programming

Kustaa Kangas; Mikko Koivisto; Teppo Mikael Niinimäki


international joint conference on artificial intelligence | 2016

Counting linear extensions of sparse posets

Kustaa Kangas; Teemu Hankala; Teppo Mikael Niinimäki; Mikko Koivisto


uncertainty in artificial intelligence | 2012

Local structure discovery in Bayesian networks

Teppo Mikael Niinimäki; Pekka Parviainen


Journal of Machine Learning Research | 2016

Structure discovery in Bayesian networks by sampling partial orders

Teppo Mikael Niinimäki; Pekka Parviainen; Mikko Koivisto


uncertainty in artificial intelligence | 2013

Treedy: a heuristic for counting and sampling subsets

Teppo Mikael Niinimäki; Mikko Koivisto


national conference on artificial intelligence | 2018

Counting Linear Extensions in Practice: MCMC versus Exponential Monte Carlo

Topi Talvitie; Kustaa Kangas; Teppo Mikael Niinimäki; Mikko Koivisto


international joint conference on artificial intelligence | 2018

A Scalable Scheme for Counting Linear Extensions

Topi Talvitie; Kustaa Kangas; Teppo Mikael Niinimäki; Mikko Koivisto

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Mikko Koivisto

Helsinki Institute for Information Technology

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Kustaa Kangas

Helsinki Institute for Information Technology

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Pekka Parviainen

Helsinki Institute for Information Technology

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Teemu Hankala

Helsinki Institute for Information Technology

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