Simulations for novel problems in recommendation: analyzing misinformation and data characteristics

10/08/2021
by   Alejandro Bellogín, et al.
0

In this position paper, we discuss recent applications of simulation approaches for recommender systems tasks. In particular, we describe how they were used to analyze the problem of misinformation spreading and understand which data characteristics affect the performance of recommendation algorithms more significantly. We also present potential lines of future work where simulation methods could advance the work in the recommendation community.

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