Bayesian Knowledge Bases

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A Bayesian knowledge-base is a knowledge representation system that has a similar structure as a Bayesian network. It represents knowledge by an “if-then” structure and represents uncertainty by probability theory. BKBs subsume BNs and are advantageous to BNs because BKBs are robust to knowledge incompleteness and cyclic information, while still preserving a probabilistically sound representation of uncertainty. We now extend BKBs to represent both time and interaction since time is the key component of a dynamic world. We target to provide a comprehensive model that can describe the interactions of knowledge in the world, as well as reason through them.
A Bayesian knowledge-base is a knowledge representation system that has a similar structure as a Bayesian network. It represents knowledge by an “if-then” structure and represents uncertainty by probability theory. BKBs subsume BNs and are advantageous to BNs because BKBs are robust to knowledge incompleteness and cyclic information, while still preserving a probabilistically sound representation of uncertainty. We now extend BKBs to represent both time and interaction since time is the key component of a dynamic world. We target to provide a comprehensive model that can describe the interactions of knowledge in the world, as well as reason through them.
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* [[Culturally Infused Social Network Analysis]] 
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* [[Adversary Intent Inferencing|Adversary Intent Inferencing]] 
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* [[CyberCAFE|CyberCAFE]]
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* [[Surgical Intent|Surgical Intent]]
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* [[MURI|MURI]]
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* [[Knowledge Engineering under Time and Uncertainty]]

Revision as of 23:58, 25 June 2009

A Bayesian knowledge-base is a knowledge representation system that has a similar structure as a Bayesian network. It represents knowledge by an “if-then” structure and represents uncertainty by probability theory. BKBs subsume BNs and are advantageous to BNs because BKBs are robust to knowledge incompleteness and cyclic information, while still preserving a probabilistically sound representation of uncertainty. We now extend BKBs to represent both time and interaction since time is the key component of a dynamic world. We target to provide a comprehensive model that can describe the interactions of knowledge in the world, as well as reason through them.

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