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Distributed Score Computation (DiSC) is a scalable approach for fast, approximate score computation to learn multinomial Bayesian networks over distributed data.

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DiSC Demo

Introduction

The demo would provide a real-time and interactive experience to a user on how the system employs the principle of gossiping and hashing techniques in a novel way for fast approximate score computation. The user can control different aspects of the system’s execution on a cluster with up to 32 nodes. The approximate scores downloaded can be then used by existing score-based structure learning algorithms.

Demo

Demo

Publication

Arun Zachariah, Praveen Rao, Anas Katib, Monica Senapati, Kobus Barnard - A Gossip-Based System for Fast Approximate Score Computation in Multinomial Bayesian Networks. In the 35th IEEE International Conference on Data Engineering (ICDE), pages 1968-1971, Macau, China, 2019. (PDF)

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Distributed Score Computation (DiSC) is a scalable approach for fast, approximate score computation to learn multinomial Bayesian networks over distributed data.

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