ConformalHDC: Uncertainty-Aware Hyperdimensional Computing with Application to Neural Decoding
- URL: http://arxiv.org/abs/2602.21446v1
- Date: Tue, 24 Feb 2026 23:52:08 GMT
- Title: ConformalHDC: Uncertainty-Aware Hyperdimensional Computing with Application to Neural Decoding
- Authors: Ziyi Liang, Hamed Poursiami, Zhishun Yang, Keiland Cooper, Akhilesh Jaiswal, Maryam Parsa, Norbert Fortin, Babak Shahbaba,
- Abstract summary: We introduce ConformalHDC, a unified framework that combines the statistical guarantees of conformal prediction with the computational efficiency of Hyperdimensional Computing.<n>We show that ConformalHDC not only accurately decodes the stimulus information represented in the neural activity data, but also provides rigorous uncertainty estimates and correctly abstains when presented with data from other behavioral states.
- Score: 2.5805874648322664
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Hyperdimensional Computing (HDC) offers a computationally efficient paradigm for neuromorphic learning. Yet, it lacks rigorous uncertainty quantification, leading to open decision boundaries and, consequently, vulnerability to outliers, adversarial perturbations, and out-of-distribution inputs. To address these limitations, we introduce ConformalHDC, a unified framework that combines the statistical guarantees of conformal prediction with the computational efficiency of HDC. For this framework, we propose two complementary variations. First, the set-valued formulation provides finite-sample, distribution-free coverage guarantees. Using carefully designed conformity scores, it forms enclosed decision boundaries that improve robustness to non-conforming inputs. Second, the point-valued formulation leverages the same conformity scores to produce a single prediction when desired, potentially improving accuracy over traditional HDC by accounting for class interactions. We demonstrate the broad applicability of the proposed framework through evaluations on multiple real-world datasets. In particular, we apply our method to the challenging problem of decoding non-spatial stimulus information from the spiking activity of hippocampal neurons recorded as subjects performed a sequence memory task. Our results show that ConformalHDC not only accurately decodes the stimulus information represented in the neural activity data, but also provides rigorous uncertainty estimates and correctly abstains when presented with data from other behavioral states. Overall, these capabilities position the framework as a reliable, uncertainty-aware foundation for neuromorphic computing.
Related papers
- COIN: Uncertainty-Guarding Selective Question Answering for Foundation Models with Provable Risk Guarantees [51.5976496056012]
COIN is an uncertainty-guarding selection framework that calibrates statistically valid thresholds to filter a single generated answer per question.<n>COIN estimates the empirical error rate on a calibration set and applies confidence interval methods to establish a high-probability upper bound on the true error rate.<n>We demonstrate COIN's robustness in risk control, strong test-time power in retaining admissible answers, and predictive efficiency under limited calibration data.
arXiv Detail & Related papers (2025-06-25T07:04:49Z) - SConU: Selective Conformal Uncertainty in Large Language Models [59.25881667640868]
We propose a novel approach termed Selective Conformal Uncertainty (SConU)<n>We develop two conformal p-values that are instrumental in determining whether a given sample deviates from the uncertainty distribution of the calibration set at a specific manageable risk level.<n>Our approach not only facilitates rigorous management of miscoverage rates across both single-domain and interdisciplinary contexts, but also enhances the efficiency of predictions.
arXiv Detail & Related papers (2025-04-19T03:01:45Z) - Noise-Adaptive Conformal Classification with Marginal Coverage [53.74125453366155]
We introduce an adaptive conformal inference method capable of efficiently handling deviations from exchangeability caused by random label noise.<n>We validate our method through extensive numerical experiments demonstrating its effectiveness on synthetic and real data sets.
arXiv Detail & Related papers (2025-01-29T23:55:23Z) - Distilling Calibration via Conformalized Credal Inference [30.8135853479509]
One way to enhance reliability is through uncertainty quantification via Bayesian inference.<n>This paper introduces a low-complexity methodology to address this challenge by distilling calibration information from a more complex model.<n> Experiments on visual and language tasks demonstrate that the proposed approach, termed Conformalized Distillation for Credal Inference (CD-CI), significantly improves calibration performance.
arXiv Detail & Related papers (2025-01-10T15:57:23Z) - Know Where You're Uncertain When Planning with Multimodal Foundation Models: A Formal Framework [54.40508478482667]
We present a comprehensive framework to disentangle, quantify, and mitigate uncertainty in perception and plan generation.<n>We propose methods tailored to the unique properties of perception and decision-making.<n>We show that our uncertainty disentanglement framework reduces variability by up to 40% and enhances task success rates by 5% compared to baselines.
arXiv Detail & Related papers (2024-11-03T17:32:00Z) - Generative Conformal Prediction with Vectorized Non-Conformity Scores [6.059745771017814]
Conformal prediction provides model-agnostic uncertainty quantification with guaranteed coverage.<n>We propose a generative conformal prediction framework with vectorized non-conformity scores.<n>We construct adaptive uncertainty sets using density-ranked uncertainty balls.
arXiv Detail & Related papers (2024-10-17T16:37:03Z) - ConU: Conformal Uncertainty in Large Language Models with Correctness Coverage Guarantees [68.33498595506941]
We introduce a novel uncertainty measure based on self-consistency theory.
We then develop a conformal uncertainty criterion by integrating the uncertainty condition aligned with correctness into the CP algorithm.
Empirical evaluations indicate that our uncertainty measure outperforms prior state-of-the-art methods.
arXiv Detail & Related papers (2024-06-29T17:33:07Z) - D2SP: Dynamic Dual-Stage Purification Framework for Dual Noise Mitigation in Vision-based Affective Recognition [32.74206402632733]
Noise arises from low-quality captures that defy logical labeling, and instances that suffer from mislabeling due to annotation bias.
We have crafted a two-stage framework aiming at textbfSeeking textbfCertain data textbfIn extensive textbfUncertain data (SCIU)
This initiative aims to purge the DFER datasets of these uncertainties, thereby ensuring that only clean, verified data is employed in training processes.
arXiv Detail & Related papers (2024-06-24T09:25:02Z) - Distributional Shift-Aware Off-Policy Interval Estimation: A Unified
Error Quantification Framework [8.572441599469597]
We study high-confidence off-policy evaluation in the context of infinite-horizon Markov decision processes.
The objective is to establish a confidence interval (CI) for the target policy value using only offline data pre-collected from unknown behavior policies.
We show that our algorithm is sample-efficient, error-robust, and provably convergent even in non-linear function approximation settings.
arXiv Detail & Related papers (2023-09-23T06:35:44Z) - Lightweight, Uncertainty-Aware Conformalized Visual Odometry [2.429910016019183]
Data-driven visual odometry (VO) is a critical subroutine for autonomous edge robotics.
Emerging edge robotics devices like insect-scale drones and surgical robots lack a computationally efficient framework to estimate VO's predictive uncertainties.
This paper presents a novel, lightweight, and statistically robust framework that leverages conformal inference (CI) to extract VO's uncertainty bands.
arXiv Detail & Related papers (2023-03-03T20:37:55Z) - Unlabelled Data Improves Bayesian Uncertainty Calibration under
Covariate Shift [100.52588638477862]
We develop an approximate Bayesian inference scheme based on posterior regularisation.
We demonstrate the utility of our method in the context of transferring prognostic models of prostate cancer across globally diverse populations.
arXiv Detail & Related papers (2020-06-26T13:50:19Z) - Confounding-Robust Policy Evaluation in Infinite-Horizon Reinforcement
Learning [70.01650994156797]
Off- evaluation of sequential decision policies from observational data is necessary in batch reinforcement learning such as education healthcare.
We develop an approach that estimates the bounds of a given policy.
We prove convergence to the sharp bounds as we collect more confounded data.
arXiv Detail & Related papers (2020-02-11T16:18:14Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.