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Data Valuation

Data valuation in machine learning tries to determine the worth of data, or data sets, for downstream tasks. Some methods are task-agnostic and consider datasets as a whole, mostly for decision making in data markets. These look at distributional distances between samples. More often, methods look at how individual points affect performance of specific machine learning models. They assign a scalar to each element of a training set which reflects its contribution to the final performance of some model trained on it. Some concepts of value depend on a specific model of interest, others are model-agnostic.

Concepts of the usefulness of a datum or its influence on the outcome of a prediction have a long history in statistics and ML, in particular through the notion of the influence function. However, it has only been recently that rigorous and practical notions of value for data, and in particular data-sets, have appeared in the ML literature, often based on concepts from collaborative game theory, but also from generalization estimates of neural networks, or optimal transport theory, among others.

Papers

Showing 101110 of 119 papers

TitleStatusHype
LossVal: Efficient Data Valuation for Neural NetworksCode0
Towards Algorithmic Fairness by means of Instance-level Data Re-weighting based on Shapley ValuesCode0
QLESS: A Quantized Approach for Data Valuation and Selection in Large Language Model Fine-TuningCode0
Faithful Group Shapley ValueCode0
CHG Shapley: Efficient Data Valuation and Selection towards Trustworthy Machine LearningCode0
Towards Data Valuation via Asymmetric Data ShapleyCode0
Stochastic Amortization: A Unified Approach to Accelerate Feature and Data AttributionCode0
One Sample Fits All: Approximating All Probabilistic Values Simultaneously and EfficientlyCode0
Targeted synthetic data generation for tabular data via hardness characterizationCode0
FW-Shapley: Real-time Estimation of Weighted Shapley ValuesCode0
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