Identifying Complex Patterns in Online Information Retrieval Processes

  1. Di Caprio, Debora 2
  2. Javier Santos Arteaga, Francisco 1
  1. 1 Universidad Complutense de Madrid
    info

    Universidad Complutense de Madrid

    Madrid, España

    ROR 02p0gd045

  2. 2 University of Trento
    info

    University of Trento

    Trento, Italia

    ROR https://ror.org/05trd4x28

Actas:
Proceedings of the 5th International Conference on Intelligent Human Systems Integration (IHSI 2022) Integrating People and Intelligent Systems, February 22–24, 2022, Venice, Italy

ISSN: 2771-0718

Año de publicación: 2022

Tipo: Aportación congreso

DOI: 10.54941/AHFE100964 GOOGLE SCHOLAR lock_openAcceso abierto editor

Resumen

We define a computable benchmark framework that replicates the online information retrieval behavior of users as they proceed through the alternatives ranked by a search engine. Through their search processes, decision makers (DMs) must evaluate the characteristics defining the alternatives while aiming to observe a predetermined number satisfying their subjective preferences. A larger number of predetermined alternatives requires more complex information assimilation capacities on the side of DMs. Similarly, the complexity of the algorithms defined to formalize the subsequent retrieval behavior increases in the number of alternatives considered. The set of algorithms delivers two different strings of data, the pages clicked by the DMs and a numerical representation of each evaluation determining their retrieval behavior. We illustrate how, even when providing an Artificial Neural Network with both strings of data, the model faces considerable problems categorizing DMs correctly as their information assimilation capacities are enhanced.