Ricerca di contatti, progetti,
corsi e pubblicazioni

Cloud-Enabled High-Dimensional Low-Sample Size Machine Learning: Sparse Precision Matrix Estimation

Persone

 

Eftekhari A.

(Responsabile)

Abstract

This project aims to develop a scalable and efficient cloud-based method for sparse precision matrix estimation, a crucial task in the increasingly prevalent field of high-dimensional, low-sample-size (HDLSS) machine learning. If successful, this project will establish the foundation for standard or low-power systems to perform computationally demanding HDLSS machine learning and data analytics tasks common in many applications. Our project faces two key challenges: (C1) a hyperparameter tuning process that demands specialized domain expertise, and (C2) the high computational costs of solution methods. To overcome these, we require (R1) the elimination of the time-consuming process required for hyperparameter tuning, and (R2) an efficient and performant cloud-based solution that seamlessly integrates into existing workflows. Our objectives are (O1) to establish an algorithm that eliminates the need for hyperparameter tuning (i.e., tuning-free hyperparameters) and (O2) to develop a cloud-based solution with an API that leverages structural attributes of the computation for performance and scalability.

Informazioni aggiuntive

Data d'inizio
01.10.2024
Data di fine
30.09.2025
Durata
13 Mesi
Enti finanziatori
Stato
Concluso
Categoria
Foundations / Competitive Foundations / Hasler Foundation