Journal of Digital Information Management Biological Model for Information Retrieval

Heuristic methods based on biological aspects have been successfully used in many computer science areas of research, including information retrieval (IR). This let us ask: why there is no biological environment for the problem of information retrieval. In this paper, we tried to introduce a new biological environment and model for information retrieval that broad the modeling concept from the mathematical formula that simulates the basic elements of IR problem to their dual schemas in biology. It's a new way of thinking of, and dealing with, the problem of information retrieval. Categories and Subject Descriptors H.3.3(Information Search and Retrieval); I.6 (Modeling and Simulation) Multimedia Databases: J.3 (Life and Medical Sciences)

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