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Dive into the research topics where Mark Voortman is active.

Publication


Featured researches published by Mark Voortman.


International Journal of Approximate Reasoning | 2016

Modeling women's menstrual cycles using PICI gates in Bayesian network

Adam Zagorecki; Anna Łupińska-Dubicka; Mark Voortman; Marek J. Druzdzel

A major difficulty in building Bayesian network (BN) models is the size of conditional probability tables, which grow exponentially in the number of parents. One way of dealing with this problem is through parametric conditional probability distributions that usually require only a number of parameters that is linear in the number of parents. In this paper, we introduce a new class of parametric models, the Probabilistic Independence of Causal Influences (PICI) models, that aim at lowering the number of parameters required to specify local probability distributions, but are still capable of efficiently modeling a variety of interactions. A subset of PICI models is decomposable and this leads to significantly faster inference as compared to models that cannot be decomposed. We present an application of the proposed method to learning dynamic BNs for modeling a womans menstrual cycle. We show that PICI models are especially useful for parameter learning from small data sets and lead to higher parameter accuracy than when learning CPTs.


uncertainty in artificial intelligence | 2010

Learning why things change: the difference-based causality learner

Mark Voortman; Denver Dash; Marek J. Druzdzel


the florida ai research society | 2006

Decomposing Local Probability Distributions in Bayesian Networks for Improved Inference and Parameter Learning

Adam Zagorecki; Mark Voortman; Marek J. Druzdzel


the florida ai research society | 2008

Insensitivity of Constraint-Based Causal Discovery Algorithms to Violations of the Assumption of Multivariate Normality.

Mark Voortman; Marek J. Druzdzel


ISCRAM | 2013

Real-time decision making in urgent events: Modeling options for action.

Louise K. Comfort; Brian Colella; Mark Voortman; Scott Connelly; Jill L. Drury; Gary L. Klein; Wukich


COA'08 Proceedings of the 2008th International Conference on Causality: Objectives and Assessment - Volume 6 | 2008

Learning causal models that make correct manipulation predictions with time series data

Mark Voortman; Denver Dash; Marek J. Druzdzel


Archive | 2012

EARLY DETECTION OF NEAR-FIELD TSUNAMIS USING UNDERWATER SENSOR NETWORKS

Louise K. Comfort; T. Znati; Mark Voortman


international joint conference on artificial intelligence | 2013

Sequences of mechanisms for causal reasoning in artificial intelligence

Denver Dash; Mark Voortman; Martijn de Jongh


neural information processing systems | 2010

Learning Causal Models That Make Correct Manipulation Predictions.

Mark Voortman; Denver Dash; Marek J. Druzdzel


Causality: Objectives and Assessment | 2010

Learning Causal Models That Make Correct Manipulation Predictions With Time Series Data

Mark Voortman; Denver Dash; Marek J. Druzdzel

Collaboration


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Marek J. Druzdzel

Bialystok University of Technology

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Brian Colella

University of Pittsburgh

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Dean A. Pomerleau

Carnegie Mellon University

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Gary L. Klein

Sam Houston State University

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Gustavo Sudre

Carnegie Mellon University

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