Optimal Greedy Diversity for Recommendation

Ashkan, Azin (Technicolor Research) | Kveton, Branislav (Adobe Research) | Berkovsky, Shlomo (CSIRO) | Wen, Zheng (Yahoo! Labs)

AAAI Conferences 

The need for diversification manifests in various recommendation use cases. In this work, we propose a novel approach to diversifying a list of recommended items, which maximizes the utility of the items subject to the increase in their diversity. From a technical perspective, the problem can be viewed as maximization of a modular function on the polytope of a submodular function, which can be solved optimally by a greedy method. We evaluate our approach in an offline analysis, which incorporates a number of baselines and metrics, and in two online user studies. In all the experiments, our method outperforms the baseline methods.

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