A Strategy for Expert Recommendation From Open Data Available on the Lattes Platform

06/14/2019
by   Sérgio José de Sousa, et al.
0

With the increasing volume of data and users of curriculum systems, the difficulty of finding specialists is increasing.This work proposes an open data extraction methodology of the Lattes Platform curricula, a treatment for this data and investigates a Recommendation Agent approach based on deep neural networks with autoencoder.

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