Title of article :
From the textual description of an accident to its causes Original Research Article
Author/Authors :
Daniel Kayser، نويسنده , , Farid Nouioua، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
Every human being, reading a short report concerning a road accident, gets an idea of its causes. The work reported here attempts to enable a computer to do the same, i.e. to determine the causes of an event from a textual description of it. It relies heavily on the notion of norm for two reasons:
•
The notion of cause has often been debated but remains poorly understood: we postulate that what people tend to take as the cause of an abnormal event, like an accident, is the fact that a specific norm has been violated.
•
Natural Language Processing has given a prominent place to deduction, and for what concerns Semantics, to truth-based inference. However, norm-based inference is a much more powerful technique to get the conclusions that human readers derive from a text.
The paper describes a complete chain of treatments, from the text to the determination of the cause. The focus is set on what is called “linguistic” and “semantico-pragmatic” reasoning. The former extracts so-called “semantic literals” from the result of the parse, and the latter reduces the description of the accident to a small number of “kernel literals” which are sufficient to determine its cause. Both of them use a non-monotonic reasoning system, viz. LPARSE and SMODELS.
Several issues concerning the representation of modalities and time are discussed and illustrated by examples taken from a corpus of reports obtained from an insurance company.
Keywords :
Natural language understanding , Causal reasoning , Inference-based semantics , Semi-normal defaults , Norms
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence