Paper ID: 2210.00767

Unsupervised Search Algorithm Configuration using Query Performance Prediction

Haggai Roitman

Search engine configuration can be quite difficult for inexpert developers. Instead, an auto-configuration approach can be used to speed up development time. Yet, such an automatic process usually requires relevance labels to train a supervised model. In this work, we suggest a simple solution based on query performance prediction that requires no relevance labels but only a sample of queries in a given domain. Using two example usecases we demonstrate the merits of our solution.

Submitted: Oct 3, 2022