Dettagli del libro
Formato
Kindle
Pagine
275
Lingua
Inglese
Pubblicato
Jan 1, 2014
Editore
Psychology Press
Edizione
1
ISBN-10
1317782437
ISBN-13
9781317782438
Descrizione
David B. Leake delves into the intricate landscape of artificial intelligence and the evaluation of explanations within this realm. He explores how explanations function in AI systems, focusing on the criteria and frameworks used to assess their quality and effectiveness. By examining various methodologies, Leake aims to provide a deeper understanding of what constitutes a good explanation in the context of AI decision-making and user interaction.
The book is grounded in a comprehensive content theory, which seeks to offer a structured approach to evaluating explanations. It emphasizes the essential role of transparency and interpretability in AI, addressing the challenges that arise when complex algorithms generate outcomes that lack clarity. Through insightful analysis and real-world examples, the author illustrates the critical importance of developing AI systems that not only perform well but also communicate their reasoning effectively to users.
Leake's work is a significant contribution to both the fields of artificial intelligence and cognitive science. By highlighting the nuances of explanation evaluation, he encourages researchers and practitioners to consider how better explanations can enhance trust, understanding, and overall user experience in AI applications.
The book is grounded in a comprehensive content theory, which seeks to offer a structured approach to evaluating explanations. It emphasizes the essential role of transparency and interpretability in AI, addressing the challenges that arise when complex algorithms generate outcomes that lack clarity. Through insightful analysis and real-world examples, the author illustrates the critical importance of developing AI systems that not only perform well but also communicate their reasoning effectively to users.
Leake's work is a significant contribution to both the fields of artificial intelligence and cognitive science. By highlighting the nuances of explanation evaluation, he encourages researchers and practitioners to consider how better explanations can enhance trust, understanding, and overall user experience in AI applications.
Generi
Filosofia
Natura