Machine Learning from Weak Supervision: An Empirical Risk Minimization Approach

Machine Learning from Weak Supervision: An Empirical Risk Minimization Approach

Masashi Sugiyama , Han Bao , Takashi Ishida
Ancora nessuna valutazione
Aug 23, 2022 · Inglese · Copertina rigida (320 pagine)
Aggiungi alla mensola

Valuta questo libro


Esporta diario dei libri

Dettagli del libro

Formato Copertina rigida
Pagine 320
Lingua Inglese
Pubblicato Aug 23, 2022
Editore The MIT Press
ISBN-10 0262047071
ISBN-13 9780262047074

Descrizione

This book delves into the burgeoning field of weakly supervised learning, presenting a comprehensive look at both the theoretical and practical aspects of classification in this context. The authors draw on their expertise to structure an empirical risk minimization approach, offering insights into how weaker forms of supervision can still yield effective machine learning models.

The exploration of algorithms within the text is particularly significant, as it provides readers with actionable methodologies that can be applied to real-world datasets. Through various empirical studies, they illustrate how these techniques can overcome common pitfalls associated with limited labeled data.

By blending foundational principles with advanced applications, the authors aim to equip practitioners and researchers alike with the tools necessary to harness the power of weak supervision. This work promises to shed light on effective strategies for leveraging incomplete labels, paving the way for more robust and scalable machine learning solutions.

Libri simili

Aggiungi alla mensola

Valuta questo libro


Esporta diario dei libri