Publication:
Expansible and Reductible Computable Aggregation Rules

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2015
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CAEPIA'15
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Abstract
The aggregation operator have been considered from a computable point of view. The important condition that the computation is friendly when portions of data are inserted o deleted to the list of values to aggregate is considered.
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V Simposio de Lógica Difusa y Soft Computing.
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