Proceedings of the 13th ACM Conference on Recommender Systems 2019
DOI: 10.1145/3298689.3347018
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Uplift-based evaluation and optimization of recommenders

Abstract: Recommender systems aim to increase user actions such as clicks and purchases. Typical evaluations of recommenders regard the purchase of a recommended item as a success. However, the item may have been purchased even without the recommendation. An uplift is defned as an increase in user actions caused by recommendations. Situations with and without a recommendation cannot both be observed for a specifc user-item pair at a given time instance, making uplift-based evaluation and optimization challenging. This p… Show more

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Cited by 27 publications
(38 citation statements)
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“…The Dunnhumby dataset includes purchase and promotion logs of 2,500 users at a retailer for 93 weeks. Following [29], the items featured in the weekly mailer are considered as recommendations. To ensure reliable estimate of purchase probabilities in the next step, we filtered the dataset according to the following conditions: users with at least 10 weeks of purchase logs, items with at least 10 weeks of purchase logs, and items with both treatment and control conditions.…”
Section: Experiments Setupmentioning
confidence: 99%
See 1 more Smart Citation
“…The Dunnhumby dataset includes purchase and promotion logs of 2,500 users at a retailer for 93 weeks. Following [29], the items featured in the weekly mailer are considered as recommendations. To ensure reliable estimate of purchase probabilities in the next step, we filtered the dataset according to the following conditions: users with at least 10 weeks of purchase logs, items with at least 10 weeks of purchase logs, and items with both treatment and control conditions.…”
Section: Experiments Setupmentioning
confidence: 99%
“…Previous work[29] describes the propensity estimation in the experiment section 3. The codes are available on arXiv as ancillary files 4.…”
mentioning
confidence: 99%
“…Both methods predict purchase probabilities with and without recommendations and rank items by the difference of these probabilities. Another strategy is to directly optimize ranking models for the causal effect [38,39]. ULRMF and ULBPR [38] are heuristic pointwise and pairwise learning methods inspired by the label transformation [15,21] in uplift modeling [31,8].…”
Section: Related Workmentioning
confidence: 99%
“…Few works targeting recommendation causal effect exist [4,37,38,39], and it is largely an unexplored area of research. Among them, a recent work [39] employed IPS method [26] in causal inference field, and developed unbiased learning-torank methods.…”
Section: Introductionmentioning
confidence: 99%
“…The heterogenous treatment effect describes the effect variability due to participants' characteristics and is widely utilized in the contexts of personalized medicine, policy design and customized marketing recommendation (Kent et al, 2018;Imai and Strauss, 2011;Sato et al, 2019). In †Contributed equally.…”
Section: Introductionmentioning
confidence: 99%