IMPROVING CAUSALITY INDUCTION WITH CATEGORY LEARNING

Improving Causality Induction with Category Learning

Improving Causality Induction with Category Learning

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Causal relations are of fundamental importance for human perception and reasoning.According to the nature of causality, causality has explicit and implicit forms.In the case of explicit form, causal-effect relations exist at either clausal or discourse levels.The implicit causal-effect Tanning Oil relations heavily rely on empirical analysis and evidence accumulation.

This paper proposes a comprehensive causality extraction system (CL-CIS) integrated with the means of category-learning.CL-CIS considers cause-effect relations in both explicit and implicit HEALTHY HAIR W JOJOBA forms and especially practices the relation between category and causality in computation.In elaborately designed experiments, CL-CIS is evaluated together with general causality analysis system (GCAS) and general causality analysis system with learning (GCAS-L), and it testified to its own capability and performance in construction of cause-effect relations.This paper confirms the expectation that the precision and coverage of causality induction can be remarkably improved by means of causal and category learning.

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