Map-reduce implementation of belief combination rules
Résumé
This paper presents a generic and versatile approach for implementing combining rules on preprocessed belief
functions, issuing from a large population of information sources. In this paper, we address two issues, which
are the intrinsic complexity of the rules processing, and the possible large amount of requested combinations.
We present a fully distributed approach, based on a map-reduce (Spark) implementation.