CF4CF: Recommending Collaborative Filtering algorithms using Collaborative Filtering

نویسندگان

  • Tiago Cunha
  • Carlos Soares
  • Andr'e C.P.L.F. de Carvalho
چکیده

Automatic solutions which enable the selection of the best algorithms for a new problem are commonly found in the literature. One research area which has recently received considerable e‚orts is Collaborative Filtering. Existing work includes several approaches using Metalearning, which relate the characteristics of datasets with the performance of the algorithms. Œis work explores an alternative approach to tackle this problem. Since, in essence, both are recommendation problems, this work uses Collaborative Filtering algorithms to select Collaborative Filtering algorithms. Our approach integrates subsampling landmarkers, which are a data characterization approach commonly used in Metalearning, with a standard Collaborative Filtering method. Œe experimental results show that CF4CF competes with standard Metalearning strategies in the problem of Collaborative Filtering algorithm selection.

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تاریخ انتشار 2018