Abstract: Identifying causal drivers in multivariate time-series data is central to finance, climate science, and other domains where interactions are nonlinear, high-dimensional, and noisy. Standard ...
Rotated multivariate Linear Mixed Model (RmvLMM) is a powerful and scalable statistical framework for dual large-scale GWAS, applicable to biobank-scale samples and a large number of phenotypes.
Abstract: Quantum neural networks (QNNs) have shown remarkable potential due to their capability of representing complex functions within exponentially large Hilbert spaces. However, their application ...