Search Results for author: Jean Feng

Found 16 papers, 10 papers with code

A Brief Tutorial on Sample Size Calculations for Fairness Audits

1 code implementation7 Dec 2023 Harvineet Singh, Fan Xia, Mi-Ok Kim, Romain Pirracchio, Rumi Chunara, Jean Feng

In fairness audits, a standard objective is to detect whether a given algorithm performs substantially differently between subgroups.

Binary Classification Fairness

Designing monitoring strategies for deployed machine learning algorithms: navigating performativity through a causal lens

no code implementations20 Nov 2023 Jean Feng, Adarsh Subbaswamy, Alexej Gossmann, Harvineet Singh, Berkman Sahiner, Mi-Ok Kim, Gene Pennello, Nicholas Petrick, Romain Pirracchio, Fan Xia

When an ML algorithm interacts with its environment, the algorithm can affect the data-generating mechanism and be a major source of bias when evaluating its standalone performance, an issue known as performativity.

Causal Inference Ethics

Is this model reliable for everyone? Testing for strong calibration

1 code implementation28 Jul 2023 Jean Feng, Alexej Gossmann, Romain Pirracchio, Nicholas Petrick, Gene Pennello, Berkman Sahiner

In a well-calibrated risk prediction model, the average predicted probability is close to the true event rate for any given subgroup.

Fairness

Monitoring machine learning (ML)-based risk prediction algorithms in the presence of confounding medical interventions

1 code implementation17 Nov 2022 Jean Feng, Alexej Gossmann, Gene Pennello, Nicholas Petrick, Berkman Sahiner, Romain Pirracchio

Performance monitoring of machine learning (ML)-based risk prediction models in healthcare is complicated by the issue of confounding medical interventions (CMI): when an algorithm predicts a patient to be at high risk for an adverse event, clinicians are more likely to administer prophylactic treatment and alter the very target that the algorithm aims to predict.

Bayesian Inference Selection bias +1

Sequential algorithmic modification with test data reuse

no code implementations21 Mar 2022 Jean Feng, Gene Pennello, Nicholas Petrick, Berkman Sahiner, Romain Pirracchio, Alexej Gossmann

Each modification introduces a risk of deteriorating performance and must be validated on a test dataset.

Bayesian logistic regression for online recalibration and revision of risk prediction models with performance guarantees

1 code implementation13 Oct 2021 Jean Feng, Alexej Gossmann, Berkman Sahiner, Romain Pirracchio

In the COPD study, BLR and MarBLR dynamically combined the original model with a continually-refitted gradient boosted tree to achieve aAUCs of 0. 924 (95%CI 0. 913-0. 935) and 0. 925 (95%CI 0. 914-0. 935), compared to the static model's aAUC of 0. 904 (95%CI 0. 892-0. 916).

regression

Learning how to approve updates to machine learning algorithms in non-stationary settings

no code implementations14 Dec 2020 Jean Feng

Machine learning algorithms in healthcare have the potential to continually learn from real-world data generated during healthcare delivery and adapt to dataset shifts.

BIG-bench Machine Learning

Efficient nonparametric statistical inference on population feature importance using Shapley values

3 code implementations ICML 2020 Brian D. Williamson, Jean Feng

The true population-level importance of a variable in a prediction task provides useful knowledge about the underlying data-generating mechanism and can help in deciding which measurements to collect in subsequent experiments.

Feature Importance Mortality Prediction +1

Ensembled sparse-input hierarchical networks for high-dimensional datasets

3 code implementations11 May 2020 Jean Feng, Noah Simon

Neural networks have seen limited use in prediction for high-dimensional data with small sample sizes, because they tend to overfit and require tuning many more hyperparameters than existing off-the-shelf machine learning methods.

Vocal Bursts Intensity Prediction

Approval policies for modifications to Machine Learning-Based Software as a Medical Device: A study of bio-creep

1 code implementation28 Dec 2019 Jean Feng, Scott Emerson, Noah Simon

Successful deployment of machine learning algorithms in healthcare requires careful assessments of their performance and safety.

BIG-bench Machine Learning Marketing +1

Selective prediction-set models with coverage guarantees

1 code implementation13 Jun 2019 Jean Feng, Arjun Sondhi, Jessica Perry, Noah Simon

Though black-box predictors are state-of-the-art for many complex tasks, they often fail to properly quantify predictive uncertainty and may provide inappropriate predictions for unfamiliar data.

Nonparametric variable importance using an augmented neural network with multi-task learning

1 code implementation ICML 2018 Jean Feng, Brian Williamson, Noah Simon, Marco Carone

In predictive modeling applications, it is often of interest to determine the relative contribution of subsets of features in explaining the variability of an outcome.

Multi-Task Learning

Sparse-Input Neural Networks for High-dimensional Nonparametric Regression and Classification

1 code implementation21 Nov 2017 Jean Feng, Noah Simon

In addition, we characterize the statistical convergence of the penalized empirical risk minimizer to the optimal neural network: we show that the excess risk of this penalized estimator only grows with the logarithm of the number of input features; and we show that the weights of irrelevant features converge to zero.

General Classification regression +1

Gradient-based Regularization Parameter Selection for Problems with Non-smooth Penalty Functions

no code implementations28 Mar 2017 Jean Feng, Noah Simon

It is more efficient to tune parameters if the gradient can be determined, but this is often difficult for problems with non-smooth penalty functions.

regression

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