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Analysis and Evaluation

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Dynamic Profiles for Voting Advice Applications

Part of the book series: Fuzzy Management Methods ((FMM))

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Abstract

This chapter is dedicated to show different evaluation metrics used during the execution of the Participa Inteligente project from the date of the launching of the platform (October 1, 2016) until May 1, 2017. This corresponds to the period of campaign and elections. The fist round took place on February 19, 2017 and the second round took place on April 2, 2017. During the first round, seven candidates for president and vice president were included and more than 3000 candidates for the national assembly, which includes only 137 chairs. For the second round only two political parties presented candidates for president and vice president.

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Correspondence to Luis Terán .

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Terán, L. (2020). Analysis and Evaluation. In: Dynamic Profiles for Voting Advice Applications. Fuzzy Management Methods. Springer, Cham. https://doi.org/10.1007/978-3-030-24090-5_7

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