This book provides a comprehensive, up-to-date, and rigorously detailed introduction to Non-Axiomatic Logic (NAL), a groundbreaking framework for adaptive systems operating under conditions of insufficient knowledge and resources. Designed according to the principles of human cognition, NAL serves as a cornerstone for advancing general-purpose Artificial Intelligence while addressing many topics in logic, psychology, linguistics, philosophy, and computer science.
Now fully expanded into a textbook format, this second edition builds on the foundation of the 2013 lecture notes-style first edition, transforming it into an ideal resource for one-semester graduate or upper-level undergraduate courses. Retaining the original structure while significantly enhancing accessibility and depth, this edition features:
New theoretical advancements in NAL design, particularly in later chapters.Clearer exposition of core concepts, including the rationale behind NAL's formalism.Practical insights into key design choices for computer implementations.Enhanced pedagogy: Detailed examples, chapter summaries, and end-of-chapter exercises to reinforce learning.Critical context: Footnotes comparing NAL to alternative models and exploring advanced topics.Meticulous revisions: Corrections of errors and typos for improved accuracy.Readers with a college-level background in AI, computer science, or mathematical logic will find this book indispensable for understanding the principles and applications of NAL in AI development.