Learning-To-Ensemble by Contextual Rank Aggregation in E-Commerce

07/19/2021
by   Xuesi Wang, et al.
0

Ensemble models in E-commerce combine predictions from multiple sub-models for ranking and revenue improvement. Industrial ensemble models are typically deep neural networks, following the supervised learning paradigm to infer conversion rate given inputs from sub-models. However, this process has the following two problems. Firstly, the point-wise scoring approach disregards the relationships between items and leads to homogeneous displayed results, while diversified display benefits user experience and revenue. Secondly, the learning paradigm focuses on the ranking metrics and does not directly optimize the revenue. In our work, we propose a new Learning-To-Ensemble (LTE) framework RAEGO, which replaces the ensemble model with a contextual Rank Aggregator (RA) and explores the best weights of sub-models by the Evaluator-Generator Optimization (EGO). To achieve the best online performance, we propose a new rank aggregation algorithm TournamentGreedy as a refinement of classic rank aggregators, which also produces the best average weighted Kendall Tau Distance (KTD) amongst all the considered algorithms with quadratic time complexity. Under the assumption that the best output list should be Pareto Optimal on the KTD metric for sub-models, we show that our RA algorithm has higher efficiency and coverage in exploring the optimal weights. Combined with the idea of Bayesian Optimization and gradient descent, we solve the online contextual Black-Box Optimization task that finds the optimal weights for sub-models given a chosen RA model. RA-EGO has been deployed in our online system and has improved the revenue significantly.

READ FULL TEXT
research
03/25/2020

Validation Set Evaluation can be Wrong: An Evaluator-Generator Approach for Maximizing Online Performance of Ranking in E-commerce

Learning-to-rank (LTR) has become a key technology in E-commerce applica...
research
09/09/2020

Boosting Retailer Revenue by Generated Optimized Combined Multiple Digital Marketing Campaigns

Campaign is a frequently employed instrument in lifting up the GMV (Gros...
research
03/25/2020

Beyond the Ground-Truth: An Evaluator-Generator Framework for Group-wise Learning-to-Rank in E-Commerce

Learning-to-rank (LTR) has become a key technology in E-commerce applica...
research
11/29/2015

MidRank: Learning to rank based on subsequences

We present a supervised learning to rank algorithm that effectively orde...
research
05/25/2020

Generator and Critic: A Deep Reinforcement Learning Approach for Slate Re-ranking in E-commerce

The slate re-ranking problem considers the mutual influences between ite...
research
12/08/2021

Aggregation of Pareto optimal models

In statistical decision theory, a model is said to be Pareto optimal (or...
research
08/05/2020

Optimizing AD Pruning of Sponsored Search with Reinforcement Learning

Industrial sponsored search system (SSS) can be logically divided into t...

Please sign up or login with your details

Forgot password? Click here to reset