Learning Mixed Multinomial Logit Model from Ordinal Data

Neural Information Processing Systems 

Motivated by generating personalized recommendations using ordinal (or preference) data, we study the question of learning a mixture of MultiNomial Logit (MNL) model, a parameterized class of distributions over permutations, from partial ordinal or preference data (e.g.