Timezone: »
Shapley value is a popular approach for measuring the influence of individual features. While Shapley feature attribution is built upon desiderata from game theory, some of its constraints may be less natural in certain machine learning settings, leading to unintuitive model interpretation. In particular, the Shapley value uses the same weight for all marginal contributions---i.e. it gives the same importance when a large number of other features are given versus when a small number of other features are given. This property can be problematic if larger feature sets are more or less informative than smaller feature sets. Our work performs a rigorous analysis of the potential limitations of Shapley feature attribution. We identify simple settings where the Shapley value is mathematically suboptimal by assigning larger attributions for less influential features. Motivated by this observation, we propose WeightedSHAP, which generalizes the Shapley value and learns which marginal contributions to focus directly from data. On several real-world datasets, we demonstrate that the influential features identified by WeightedSHAP are better able to recapitulate the model's predictions compared to the features identified by the Shapley value.
Author Information
Yongchan Kwon (Columbia University)
James Zou (Stanford)
More from the Same Authors
-
2022 : Predicting Immune Escape with Pretrained Protein Language Model Embeddings »
Kyle Swanson · Howard Chang · James Zou -
2022 : Data-driven subgroup identification for linear regression »
Zachary Izzo · Ruishan Liu · James Zou -
2022 : Is Unsupervised Performance Estimation Impossible When Both Covariates and Labels shift? »
Lingjiao Chen · Matei Zaharia · James Zou -
2022 : DrML: Diagnosing and Rectifying Vision Models using Language »
Yuhui Zhang · Jeff Z. HaoChen · Shih-Cheng Huang · Kuan-Chieh Wang · James Zou · Serena Yeung -
2022 : Provable Re-Identification Privacy »
Zachary Izzo · Jinsung Yoon · Sercan Arik · James Zou -
2022 : Recommendation for New Drugs with Limited Prescription Data »
Zhenbang Wu · Huaxiu Yao · Zhe Su · David Liebovitz · Lucas Glass · James Zou · Chelsea Finn · Jimeng Sun -
2022 : An Electrocardiogram-Based Risk Score for Cardiovascular Mortality »
John Hughes · David Ouyang · Pierre Elias · James Zou · Euan Ashley · Marco Perez -
2022 : An Electrocardiogram-Based Risk Score for Cardiovascular Mortality »
John Hughes · David Ouyang · Pierre Elias · James Zou · Euan Ashley · Marco Perez -
2022 Poster: Estimating and Explaining Model Performance When Both Covariates and Labels Shift »
Lingjiao Chen · Matei Zaharia · James Zou -
2022 Poster: SkinCon: A skin disease dataset densely annotated by domain experts for fine-grained debugging and analysis »
Roxana Daneshjou · Mert Yuksekgonul · Zhuo Ran Cai · Roberto Novoa · James Zou -
2022 Poster: HAPI: A Large-scale Longitudinal Dataset of Commercial ML API Predictions »
Lingjiao Chen · Zhihua Jin · Evan Sabri Eyuboglu · Christopher RĂ© · Matei Zaharia · James Zou -
2022 Poster: Uncalibrated Models Can Improve Human-AI Collaboration »
Kailas Vodrahalli · Tobias Gerstenberg · James Zou -
2022 Poster: C-Mixup: Improving Generalization in Regression »
Huaxiu Yao · Yiping Wang · Linjun Zhang · James Zou · Chelsea Finn -
2022 Poster: Mind the Gap: Understanding the Modality Gap in Multi-modal Contrastive Representation Learning »
Victor Weixin Liang · Yuhui Zhang · Yongchan Kwon · Serena Yeung · James Zou -
2021 Poster: Adversarial Training Helps Transfer Learning via Better Representations »
Zhun Deng · Linjun Zhang · Kailas Vodrahalli · Kenji Kawaguchi · James Zou -
2020 Session: Orals & Spotlights Track 02: COVID/Health/Bio Applications »
Tristan Naumann · James Zou -
2019 Poster: Making AI Forget You: Data Deletion in Machine Learning »
Antonio Ginart · Melody Guan · Gregory Valiant · James Zou -
2019 Spotlight: Making AI Forget You: Data Deletion in Machine Learning »
Antonio Ginart · Melody Guan · Gregory Valiant · James Zou -
2017 Workshop: Machine Learning in Computational Biology »
James Zou · Anshul Kundaje · Gerald Quon · Nicolo Fusi · Sara Mostafavi -
2017 Poster: NeuralFDR: Learning Discovery Thresholds from Hypothesis Features »
Fei Xia · Martin J Zhang · James Zou · David Tse