Length optimization in conformal prediction
Conditional validity and length efficiency are two crucial aspects of conformal prediction
(CP). Achieving conditional validity ensures accurate uncertainty quantification for data …
(CP). Achieving conditional validity ensures accurate uncertainty quantification for data …
Asymptotic bias of inexact Markov Chain Monte Carlo methods in high dimension
Inexact Markov chain Monte Carlo methods rely on Markov chains that do not exactly
preserve the target distribution. Examples include the unadjusted Langevin algorithm (ULA) …
preserve the target distribution. Examples include the unadjusted Langevin algorithm (ULA) …
Knowing when to stop: Delay-adaptive spiking neural network classifiers with reliability guarantees
Spiking neural networks (SNNs) process time-series data via internal event-driven neural
dynamics. The energy consumption of an SNN depends on the number of spikes exchanged …
dynamics. The energy consumption of an SNN depends on the number of spikes exchanged …
Federated inference with reliable uncertainty quantification over wireless channels via conformal prediction
In this paper, we consider a wireless federated inference scenario in which devices and a
server share a pre-trained machine learning model. The devices communicate statistical …
server share a pre-trained machine learning model. The devices communicate statistical …
What If We Had Used a Different App? Reliable Counterfactual KPI Analysis in Wireless Systems
In modern wireless network architectures, such as Open Radio Access Network (O-RAN),
the operation of the radio access network (RAN) is managed by applications, or apps for …
the operation of the radio access network (RAN) is managed by applications, or apps for …
Cross-validation conformal risk control
Conformal risk control (CRC) is a recently proposed technique that applies post-hoc to a
conventional point predictor to provide calibration guarantees. Generalizing conformal …
conventional point predictor to provide calibration guarantees. Generalizing conformal …
Guaranteed dynamic scheduling of ultra-reliable low-latency traffic via conformal prediction
The dynamic scheduling of ultra-reliable and low-latency communication traffic (URLLC) in
the uplink can significantly enhance the efficiency of coexisting services, such as enhanced …
the uplink can significantly enhance the efficiency of coexisting services, such as enhanced …
Neuromorphic Split Computing with Wake-Up Radios: Architecture and Design via Digital Twinning
Neuromorphic computing leverages the sparsity of temporal data to reduce processing
energy by activating a small subset of neurons and synapses at each time step. When …
energy by activating a small subset of neurons and synapses at each time step. When …
Uncertainty, Calibration, and Membership Inference Attacks: An Information-Theoretic Perspective
In a membership inference attack (MIA), an attacker exploits the overconfidence exhibited by
typical machine learning models to determine whether a specific data point was used to train …
typical machine learning models to determine whether a specific data point was used to train …
Power Control for NN-Based Wireless Distributed Inference With Improved Model Calibration
In recent years, the application of neural networks (NNs) in wireless communication has
garnered widespread attention and proven successful. However, conventional learning …
garnered widespread attention and proven successful. However, conventional learning …