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Neural Approximation and Its Applications

About

Multivariate function approximation is a fundamental problem in machine learning. Classic multivariate function approximations rely on hand-crafted basis functions (e.g., polynomial basis and Fourier basis), which limits their approximation ability and data adaptation ability, resulting in unsatisfactory performance. To address these challenges, we introduce the neural basis function by leveraging an untrained neural network as the basis function. Equipped with the proposed neural basis function, we suggest the neural approximation (NeuApprox) paradigm for multivariate function approximation. Specifically, the underlying multivariate function behind the multi-dimensional data is decomposed into a sum of block terms. The clear physically-interpreted block term is the product of expressive neural basis functions and their corresponding learnable coefficients, which allows us to faithfully capture distinct components of the underlying data and also flexibly adapt to new data by readily fine-tuning the neural basis functions. Attributed to the elaborately designed block terms, the suggested NeuApprox enjoys strong approximation ability and flexible data adaptation ability over the hand-crafted basis function-based methods. We also theoretically prove that NeuApprox can approximate any multivariate continuous function to arbitrary accuracy. Extensive experiments on diverse multi-dimensional datasets (including multispectral images, light field data, videos, traffic data, and point cloud data) demonstrate the promising performance of NeuApprox in terms of both approximation capability and adaptability.

Wei-Hao Wu, Ting-Zhu Huang, Xi-Le Zhao, Yisi Luo, Deyu Meng• 2026

Related benchmarks

TaskDatasetResultRank
Multi-dimensional image inpaintingMSIs Toys, Painting 256×256×31
PSNR38.77
35
Multi-dimensional image inpaintingVideos (Foreman, Carphone) 144×176×150
PSNR31.75
35
Multi-dimensional image inpaintingLight field data Greek, Origami 128×128×240
PSNR42.7
35
Traffic Data CompletionGuangzhou
RMSE9.24
30
Traffic Data CompletionPeMS07
RMSE10.9685
30
Traffic Data CompletionSeattle
RMSE6.48
30
Point Cloud CompletionFrog point cloud
NRMSE0.1186
30
Point Cloud CompletionMario point cloud
NRMSE0.1985
30
Point Cloud CompletionRabbit point cloud
NRMSE0.1577
30
Point cloud data completionDoll
NRMSE0.1373
6
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