AutoBayesian: developing bayesian networks based on text mining

  • Authors:
  • Sandeep Raghuram;Yuni Xia;Jiaqi Ge;Mathew Palakal;Josette Jones;Dave Pecenka;Eric Tinsley;Jean Bandos;Jerry Geesaman

  • Affiliations:
  • Indiana University - Purdue University Indianapolis;Indiana University - Purdue University Indianapolis;Indiana University - Purdue University Indianapolis;Indiana University - Purdue University Indianapolis;Indiana University - Purdue University Indianapolis;My Health Care Manager, Inc.;My Health Care Manager, Inc.;My Health Care Manager, Inc.;My Health Care Manager, Inc.

  • Venue:
  • DASFAA'11 Proceedings of the 16th international conference on Database systems for advanced applications: Part II
  • Year:
  • 2011

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Abstract

Bayesian network is a widely used tool for data analysis, modeling and decision support in various domains. There is a growing need for techniques and tools which can automatically construct Bayesian networks from massive text or literature data. In practice, Bayesian networks also need be updated when new data is observed, and literature mining is a very important source of new data after the initial network is constructed. Information closely related to Bayesian network usually includes the causal associations, statistics information and experimental results. However, these associations and numerical results cannot be directly integrated with the Bayesian network. The source of the literature and the perceived quality of research needs to be factored into the process of integration. In this demo, we will present a general methodology and toolkit called AutoBayesian that we developed to automatically build and update a Bayesian network based on the casual relationships derived from text mining.