Paper ID: 2206.07295

FOLD-TR: A Scalable and Efficient Inductive Learning Algorithm for Learning To Rank

Huaduo Wang, Gopal Gupta

FOLD-R++ is a new inductive learning algorithm for binary classification tasks. It generates an (explainable) normal logic program for mixed type (numerical and categorical) data. We present a customized FOLD-R++ algorithm with the ranking framework, called FOLD-TR, that aims to rank new items following the ranking pattern in the training data. Like FOLD-R++, the FOLD-TR algorithm is able to handle mixed-type data directly and provide native justification to explain the comparison between a pair of items.

Submitted: Jun 15, 2022