Fundamental bounds on efficiency-confidence trade-off for transductive conformal prediction
About
Transductive conformal prediction addresses the simultaneous prediction for multiple data points. Given a desired confidence level, the objective is to construct a prediction set that includes the true outcomes with the prescribed confidence. We demonstrate a fundamental trade-off between confidence and efficiency in transductive methods, where efficiency is measured by the size of the prediction sets. Specifically, we derive a strict finite-sample bound showing that any non-trivial confidence level leads to exponential growth in prediction set size for data with inherent uncertainty. The exponent scales linearly with the number of samples and is proportional to the conditional entropy of the data. Additionally, the bound includes a second-order term, dispersion, defined as the variance of the log conditional probability distribution. We show that the transductive methods based on the approximate conditional distribution can approach this bound. Inspired by this setup, we introduce a practical transductive prediction algorithm that surpasses Bonferroni methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Conformal Prediction | MNIST (test) | Coverage92 | 30 | |
| Conformal Prediction | CIFAR-100 (test) | Coverage0.92 | 30 | |
| Conformal Prediction | FashionMNIST (test) | Efficiency Rate (γn,m)2.1825 | 27 | |
| Conformal Prediction | CIFAR10 (test) | Median Prediction Set Size0.00e+0 | 18 | |
| Classification Efficiency (Conformal Prediction) | CIFAR100 ResNet20 (test) | Efficiency Rate (gamma_n,m)6.3501 | 9 | |
| Transductive Conformal Prediction | CIFAR100 | Efficiency Rate6.6081 | 9 | |
| Classification Efficiency (Conformal Prediction) | MNIST LeNet5 (test) | Gamma (Efficiency Rate)-0.0099 | 9 | |
| Classification Efficiency (Conformal Prediction) | CIFAR10 ResNet20 (test) | Efficiency Rate0.6068 | 9 | |
| Transductive Conformal Prediction | MNIST | Efficiency Rate0.8133 | 9 | |
| Transductive Conformal Prediction | FashionMNIST | Efficiency Rate1.1134 | 9 |