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Ultrafast machine learning on FPGAs via Kolmogorov-Arnold Networks
Ultrafast machine learning on FPGAs via Kolmogorov-Arnold Networks This post is a high-level explainer for my Master’s thesis, which involves designing hardware architectures for ultrafast inference and online learning using the Kolmogorov-Arnold Network (KAN) architecture. I’ll assume familiarity with standard machine learning concepts, as well as some understanding of hardware and digital circuits; read my previous post here for the latter. Please read the two papers below for more...
Arnold undaunted as Iraq face tough assignment on World Cup return
Arnold undaunted as Iraq face tough assignment on World Cup return June 2 : Iraq return to the World Cup for the first time since making their debut 40 years ago, having taken a lengthy route to the finals under a coach who is no stranger to the tournament. Graham Arnold navigated the Lions of Mesopotamia through the latter stages of a 21-match qualifying campaign that ended with victory over Bolivia in the intercontinental playoffs. The Australian, who replaced Jesus Casas at the helm in...
GS-KAN: Parameter-Efficient Kolmogorov-Arnold Networks via Sprecher-Type Shared Basis Functions
arXiv:2512.09084v3 Announce Type: replace Abstract: The Kolmogorov-Arnold representation theorem offers a theoretical alternative to Multi-Layer Perceptrons (MLPs) by placing learnable univariate functions on edges rather than nodes. While recent implementations such as Kolmogorov-Arnold Networks (KANs) demonstrate high approximation capabilities, they suffer from significant parameter inefficiency due to the requirement of maintaining unique parameterizations for every network edge. In this...
Interpretable Graph Kolmogorov-Arnold Networks for Multi-Cancer Classification and Biomarker Identification using Multi-Omics Data
arXiv:2503.22939v4 Announce Type: replace Abstract: The integration of heterogeneous multi-omics datasets at a systems level remains a central challenge for developing analytical and computational models in precision cancer diagnostics. This paper introduces Multi-Omics Graph Kolmogorov-Arnold Network (MOGKAN), a deep learning framework that utilizes messenger-RNA, micro-RNA sequences, and DNA methylation samples together with Protein-Protein Interaction (PPI) networks for cancer...
Necessary and sufficient conditions for universality of Kolmogorov-Arnold networks
Announce Type: replace Abstract: We analyze the universal approximation property of Kolmogorov-Arnold Networks (KANs) in terms of their edge functions. If these functions are all affine, then universality clearly fails. How many non-affine functions are needed, in addition to affine ones, to ensure universality?
Inferring hidden forcing in a biological oscillator using Kolmogorov-Arnold networks
arXiv:2606.08479v1 Announce Type: new Abstract: Inferring the forces that drive a dynamical system from partial observations is a fundamental challenge across physics, particularly when distinct underlying mechanisms produce similar observable dynamics. Here we show that the effective muscular forcing underlying avian respiratory dynamics can be reconstructed from measurements of air-sac pressure alone. Using an interpretable learning framework based on Kolmogorov-Arnold networks, we infer...
Nonlinear Factor Decomposition via Kolmogorov-Arnold Networks: A Spectral Approach to Asset Return Analysis
arXiv:2603.28257v2 Announce Type: replace-cross Abstract: KAN-PCA is an autoencoder that uses a KAN as encoder and a linear map as decoder. It generalizes classical PCA by replacing linear projections with learned B-spline functions on each edge. The motivation is to capture more variance than classical PCA, which becomes inefficient during market crises when the linear assumption breaks down and correlations between assets change dramatically.
Hierarchical RBF-KAN and RBF-SKAN Architectures for Multidimensional Function Approximation and Random Field Learning
arXiv:2606.02936v1 Announce Type: new Abstract: In this manuscript, we propose and analyze hierarchical Kolmogorov--Arnold neural network architectures employing radial basis functions as activation functions for approximating deterministic functions and random field models. Specifically, we develop a hierarchical radial-basis-function Kolmogorov--Arnold network (hierarchical RBF-KAN) for multidimensional deterministic function approximation and a hierarchical radial-basis-function...
LA’s glitzy new sports hub set for World Cup and Olympics – will local residents share in the boom?
With three top stadiums, Inglewood is remaking itself as a host of world-class events – and while some locals love the transformation, others feel left behindMelisa Arnold’s morning walks around the neighborhood are orchestrated by the staccato beat of jackhammers and the roar of airplanes pointed to and from Los Angeles international airport. This is Inglewood, she says, and its soundscape. After retiring from her human resources and payroll job last year, Arnold, 66, walks for miles around...
‘We are fighters’: Iraq aim to shock rivals at 2026 World Cup
‘We are fighters’: Iraq aim to shock rivals at 2026 World Cup Coach Graham Arnold and two key players speak to Al Jazeera ahead of Iraq’s first World Cup appearance since 1986. Twenty hours on a bus, a charter plane out of the Middle East, and a one-off game carrying the expectations of 48 million people: Iraq’s journey to the 2026 World Cup was not for the faint-hearted. The Lions of Mesopotamia were the final country to secure their spot at this summer’s tournament, after a gruelling...