Figure 7: The taxonomy of data suppression.
The translation of this ontology fragment as a
rule base yields:
Logical_suppression > data_suppression
Physical_suppression > data_suppression
Formatting > Logical_suppression
Destruction > Physical_suppression
Demagnetization > Physical_suppression
Rewriting > Physical_suppression
Partial_ rewriting > Rewriting
Total_rewriting > Rewriting
We add a rule which expresses that data which
has been logically suppressed may still exist.
Logical_suppression > existence
If logical suppression is established, the stratified
forward chaining will, like an inheritance system
with exceptions, give priority to the application of
this last rule with respect to the more general rule :
French_suppression > !existence
Therefore, this rule base should help the lawyer
or the judge make their decisions or instruct a case
by shedding light on a technical concept lacking a
legal definition. The explanation process is done
through a question-response procedure.
7 CONCLUSIONS
The framework we have presented in this paper is
based on the idea of considering cases as being, by
their structure, subclasses of articles. Therefore, the
problem of solving a case is the same as that of
classifying it. With such a system at work, all one
has to do is implement articles as classes which
should not be a difficult task at least manually.
Doing this in a semi automatic or automatic way
constitutes an interesting topic for investigation. We
have also shown, in a rather practical way, how
counterfactual reasoning and non monotonic
reasoning are naturally used in legal reasoning.
However further work need to be done on this topic
independently of any domain of interest to analyze
the mechanisms that implement counterfactual
reasoning and to what extent this may be done. We
have also introduced some conceptual and technical
ideas related to fitting technical concepts and legal
concepts. Computer data suppression is one example
among other technical concepts which need
clarification such as integrity and anonymity. We
think that such concepts must be identified in the
law texts for their natural ontology be connected to a
well built legal ontology through easily understood
production rules.
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BUILDING AN ONTOLOGY THAT HELPS IDENTIFY CRIMINAL LAW ARTICLES THAT APPLY TO A
CYBERCRIME CASE
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