Transparency And Interpretability For Learned Representations Of Artificial Neural Networks


Download Transparency And Interpretability For Learned Representations Of Artificial Neural Networks PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Transparency And Interpretability For Learned Representations Of Artificial Neural Networks book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.

Download

Transparency and Interpretability for Learned Representations of Artificial Neural Networks


Transparency and Interpretability for Learned Representations of Artificial Neural Networks

Author: Richard Meyes

language: en

Publisher: Springer Nature

Release Date: 2022-11-26


DOWNLOAD





Artificial intelligence (AI) is a concept, whose meaning and perception has changed considerably over the last decades. Starting off with individual and purely theoretical research efforts in the 1950s, AI has grown into a fully developed research field of modern times and may arguably emerge as one of the most important technological advancements of mankind. Despite these rapid technological advancements, some key questions revolving around the matter of transparency, interpretability and explainability of an AI’s decision-making remain unanswered. Thus, a young research field coined with the general term Explainable AI (XAI) has emerged from increasingly strict requirements for AI to be used in safety critical or ethically sensitive domains. An important research branch of XAI is to develop methods that help to facilitate a deeper understanding for the learned knowledge of artificial neural systems. In this book, a series of scientific studies are presented that shed light on how to adopt an empirical neuroscience inspired approach to investigate a neural network’s learned representation in the same spirit as neuroscientific studies of the brain.

Towards Ethical and Socially Responsible Explainable AI


Towards Ethical and Socially Responsible Explainable AI

Author: Mohammad Amir Khusru Akhtar

language: en

Publisher: Springer Nature

Release Date: 2024-08-30


DOWNLOAD





"Dive deep into the evolving landscape of AI with 'Towards Ethical and Socially Responsible Explainable AI'. This transformative book explores the profound impact of AI on society, emphasizing transparency, accountability, and fairness in decision-making processes. It offers invaluable insights into creating AI systems that not only perform effectively but also uphold ethical standards and foster trust. Essential reading for technologists, policymakers, and all stakeholders invested in shaping a responsible AI future."

Representation Learning for Natural Language Processing


Representation Learning for Natural Language Processing

Author: Zhiyuan Liu

language: en

Publisher: Springer Nature

Release Date: 2020-07-03


DOWNLOAD





This open access book provides an overview of the recent advances in representation learning theory, algorithms and applications for natural language processing (NLP). It is divided into three parts. Part I presents the representation learning techniques for multiple language entries, including words, phrases, sentences and documents. Part II then introduces the representation techniques for those objects that are closely related to NLP, including entity-based world knowledge, sememe-based linguistic knowledge, networks, and cross-modal entries. Lastly, Part III provides open resource tools for representation learning techniques, and discusses the remaining challenges and future research directions. The theories and algorithms of representation learning presented can also benefit other related domains such as machine learning, social network analysis, semantic Web, information retrieval, data mining and computational biology. This book is intended for advanced undergraduate and graduate students, post-doctoral fellows, researchers, lecturers, and industrial engineers, as well as anyone interested in representation learning and natural language processing.