
Foundations of Probabilistic Logic Programming
Languages, Semantics, Inference and Learning
- 420 pages
- English
- ePUB (mobile friendly)
- Available on iOS & Android
Foundations of Probabilistic Logic Programming
Languages, Semantics, Inference and Learning
About this book
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertain information by means of probability theory. Probabilistic Logic Programming is at the intersection of two wider research fields: the integration of logic and probability and Probabilistic Programming.Logic enables the representation of complex relations among entities while probability theory is useful for model uncertainty over attributes and relations. Combining the two is a very active field of study.Probabilistic Programming extends programming languages with probabilistic primitives that can be used to write complex probabilistic models. Algorithms for the inference and learning tasks are then provided automatically by the system.Probabilistic Logic programming is at the same time a logic language, with its knowledge representation capabilities, and a Turing complete language, with its computation capabilities, thus providing the best of both worlds.Since its birth, the field of Probabilistic Logic Programming has seen a steady increase of activity, with many proposals for languages and algorithms for inference and learning. Foundations of Probabilistic Logic Programming aims at providing an overview of the field with a special emphasis on languages under the Distribution Semantics, one of the most influential approaches. The book presents the main ideas for semantics, inference, and learning and highlights connections between the methods.Many examples of the book include a link to a page of the web application http://cplint.eu where the code can be run online.
Tools to learn more effectively

Saving Books

Keyword Search

Annotating Text

Listen to it instead
Information
Table of contents
- Cover
- Half Title
- Series Page
- Title Page
- Copyright Page
- Table of Contents
- Foreword
- Preface
- Acknowledgements
- List of Figures
- List of Tables
- List of Examples
- List of Definitions
- List of Theorems
- List of Abbreviations
- 1 Preliminaries
- 2 Probabilistic Logic Programming Languages
- 3 Semantics with Function Symbols
- 4 Semantics for Hybrid Programs
- 5 Exact Inference
- 6 Lifted Inference
- 7 Approximate Inference
- 8 Non-Standard Inference
- 9 Parameter Learning
- 10 Structure Learning
- 11 cplint Examples
- 12 Conclusions
- References
- Index
- About the Author
Frequently asked questions
- Essential is ideal for learners and professionals who enjoy exploring a wide range of subjects. Access the Essential Library with 800,000+ trusted titles and best-sellers across business, personal growth, and the humanities. Includes unlimited reading time and Standard Read Aloud voice.
- Complete: Perfect for advanced learners and researchers needing full, unrestricted access. Unlock 1.4M+ books across hundreds of subjects, including academic and specialized titles. The Complete Plan also includes advanced features like Premium Read Aloud and Research Assistant.
Please note we cannot support devices running on iOS 13 and Android 7 or earlier. Learn more about using the app