Fourteenth ACM Conference on Recommender Systems 2020
DOI: 10.1145/3383313.3412208
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Deconfounding User Satisfaction Estimation from Response Rate Bias

Abstract: Improving user satisfaction is at the forefront of industrial recommender systems. While significant progress has been made by utilizing logged implicit data of user-item interactions (i.e., clicks, dwell/watch time, and other user engagement signals), there has been a recent surge of interest in measuring and modeling user satisfaction, as provided by orthogonal data sources. Such data sources typically originate from responses to user satisfaction surveys, which explicitly ask users to rate their experience … Show more

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Cited by 21 publications
(13 citation statements)
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“…Some efforts have considered causality in recommendation. The first type of work is on confounding effects [10,13,37,44]. For example, [44] takes the de-confounding technique in linear models to learn real interest influenced by unobserved confounders.…”
Section: Causal Recommendationmentioning
confidence: 99%
See 1 more Smart Citation
“…Some efforts have considered causality in recommendation. The first type of work is on confounding effects [10,13,37,44]. For example, [44] takes the de-confounding technique in linear models to learn real interest influenced by unobserved confounders.…”
Section: Causal Recommendationmentioning
confidence: 99%
“…[10] explores the impact of algorithmic confounding on simulated recommender systems. [13] identifies expose rate as a confounder for user satisfaction estimation and uses IPS to handle the confounding problem. In this work, we introduce a different type of confounder that is brought by item popularity.…”
Section: Causal Recommendationmentioning
confidence: 99%
“…Moreover, its causal mechanism is different from us, e.g., it does not consider confounders. To handle bias issues, the most widely considered method is IPW-based methods 6 [10,12,28,30,47], which adjust the training distribution by reweighting training samples with propensity scores. However, the propensities are difficult to set properly, e.g., causing the high variance issues etc [4,55].…”
Section: Bias In Recommendationmentioning
confidence: 99%
“…As to the information retrieval domain, early research [46]- [49] starts from using causal inference to remove various bias in user feedback [50], such as position bias [51] and popularity bias [52]. Recently, more techniques in causal inference have been applied to solve the issues in recommendation [53]- [55], for example, causal intervention [56] and counterfactual inference [6]. However, existing work on causal recommendation has never studied the colliding effect or the causality-based inference strategy.…”
Section: Related Workmentioning
confidence: 99%