menu

0
  • argentina
  • chile
  • colombia
  • españa
  • méxico
  • perú
  • estados unidos
  • internacional
portada Machine Learning for Automated Theorem Proving: Learning to Solve SAT and QSAT (in English)
Type
Physical Book
Publisher
Language
Inglés
Pages
202
Format
Paperback
Dimensions
23.4 x 15.6 x 1.1 cm
Weight
0.29 kg.
ISBN13
9781680838985

Machine Learning for Automated Theorem Proving: Learning to Solve SAT and QSAT (in English)

Sean B. Holden (Author) · Now Publishers · Paperback

Machine Learning for Automated Theorem Proving: Learning to Solve SAT and QSAT (in English) - Holden, Sean B.

Physical Book

$ 83.37

$ 99.00

You save: $ 15.63

16% discount
  • Condition: New
It will be shipped from our warehouse between Friday, June 21 and Monday, June 24.
You will receive it anywhere in United States between 1 and 3 business days after shipment.

Synopsis "Machine Learning for Automated Theorem Proving: Learning to Solve SAT and QSAT (in English)"

Automated theorem proving represents a significant and long-standing area of research in computer science, with numerous applications. A large proportion of the methods developed to date for the implementation of automated theorem provers (ATPs) have been algorithmic, sharing a great deal in common with the wider study of heuristic search algorithms. However, in recent years researchers have begun to incorporate machine learning (ML) methods into ATPs in an effort to extract better performance. Propositional satisfiability (SAT) solving and machine learning are both large and longstanding areas of research, and each has a correspondingly large literature. In this book, the author presents the results of his thorough and systematic review of the research at the intersection of these two apparently rather unrelated fields. It focusses on the research that has appeared to date on incorporating ML methods into solvers for propositional satisfiability SAT problems, and also solvers for its immediate variants such as and quantified SAT (QSAT). The comprehensiveness of the coverage means that ML researchers gain an understanding of state-of-the-art SAT and QSAT solvers that is sufficient to make new opportunities for applying their own ML research to this domain clearly visible, while ATP researchers gain a clear appreciation of how state-of-the-art machine learning might help them to design better solvers. In presenting the material, the author concentrates on the learning methods used and the way in which they have been incorporated into solvers. This enables researchers and students in both Automated Theorem Proving and Machine Learning to a) know what has been tried and b) understand the often complex interaction between ATP and ML that is needed for success in these undeniably challenging applications.

Customers reviews

More customer reviews
  • 0% (0)
  • 0% (0)
  • 0% (0)
  • 0% (0)
  • 0% (0)

Frequently Asked Questions about the Book

All books in our catalog are Original.
The book is written in English.
The binding of this edition is Paperback.

Questions and Answers about the Book

Do you have a question about the book? Login to be able to add your own question.

Opinions about Bookdelivery

More customer reviews