Calibration Matters: Tackling Maximization Bias in Large-scale Advertising Recommendation Systems

05/19/2022
by   Yewen Fan, et al.
0

Calibration is defined as the ratio of the average predicted click rate to the true click rate. The optimization of calibration is essential to many online advertising recommendation systems because it directly affects the downstream bids in ads auctions and the amount of money charged to advertisers. Despite its importance, calibration optimization often suffers from a problem called "maximization bias". Maximization bias refers to the phenomenon that the maximum of predicted values overestimates the true maximum. The problem is introduced because the calibration is computed on the set selected by the prediction model itself. It persists even if unbiased predictions can be achieved on every datapoint and worsens when covariate shifts exist between the training and test sets. To mitigate this problem, we theorize the quantification of maximization bias and propose a variance-adjusting debiasing (VAD) meta-algorithm in this paper. The algorithm is efficient, robust, and practical as it is able to mitigate maximization bias problems under covariate shifts, neither incurring additional online serving costs nor compromising the ranking performance. We demonstrate the effectiveness of the proposed algorithm using a state-of-the-art recommendation neural network model on a large-scale real-world dataset.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2021

Improved Predictive Uncertainty using Corruption-based Calibration

We propose a simple post hoc calibration method to estimate the confiden...
research
06/29/2020

Unsupervised Calibration under Covariate Shift

A probabilistic model is said to be calibrated if its predicted probabil...
research
12/05/2021

Long-Tail Session-based Recommendation from Calibration

Accurate prediction in session-based recommendation has achieved progres...
research
02/03/2019

Value-aware Recommendation based on Reinforced Profit Maximization in E-commerce Systems

Existing recommendation algorithms mostly focus on optimizing traditiona...
research
06/06/2023

Rec4Ad: A Free Lunch to Mitigate Sample Selection Bias for Ads CTR Prediction in Taobao

Click-Through Rate (CTR) prediction serves as a fundamental component in...
research
02/19/2019

Joint Optimization of Tree-based Index and Deep Model for Recommender Systems

Large-scale industrial recommender systems are usually confronted with c...
research
08/12/2022

Joint Optimization of Ranking and Calibration with Contextualized Hybrid Model

Despite the development of ranking optimization techniques, the pointwis...

Please sign up or login with your details

Forgot password? Click here to reset