I am pleased to announce the second edition of my book:
Foundations of Probabilistic Logic Programming 
Languages, Semantics, Inference and Learning 
Second edition, 2022
Author: Fabrizio Riguzzi, University of Ferrara, Italy 
Publisher: River Publishers 
Series: River Publishers Series in Software Engineering 
ISBN: 9788770227063 
e-ISBN: 9788770227193 
https://nam04.safelinks.protection.outlook.com/?url=https%3A%2F%2Fml.unife.it%2Fplp-book%2F&data=05%7C01%7Cuai%40engr.orst.edu%7C27e72dbd71924b35cda708db0e63c0e9%7Cce6d05e13c5e4d6287a84c4a2713c113%7C0%7C0%7C638119593825510105%7CUnknown%7CTWFpbGZsb3d8eyJWIjoiMC4wLjAwMDAiLCJQIjoiV2luMzIiLCJBTiI6Ik1haWwiLCJXVCI6Mn0%3D%7C3000%7C%7C%7C&sdata=i%2BMfUc0bbbbmszYjlO9wjoRJFt8Wct3A2axJfomwVkM%3D&reserved=0

The book is now available from IEEE Xplore at 
https://nam04.safelinks.protection.outlook.com/?url=https%3A%2F%2Fieeexplore.ieee.org%2Fbook%2F9999514&data=05%7C01%7Cuai%40engr.orst.edu%7C27e72dbd71924b35cda708db0e63c0e9%7Cce6d05e13c5e4d6287a84c4a2713c113%7C0%7C0%7C638119593825510105%7CUnknown%7CTWFpbGZsb3d8eyJWIjoiMC4wLjAwMDAiLCJQIjoiV2luMzIiLCJBTiI6Ik1haWwiLCJXVCI6Mn0%3D%7C3000%7C%7C%7C&sdata=IAusv5z8C7jhUHAf5zZcaBaeQjlh8%2FBNrsRvhDnL8ak%3D&reserved=0
It will be available in print and e-book form in June 2023.

Abstract
  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 modeling 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 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. This book 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 
https://nam04.safelinks.protection.outlook.com/?url=http%3A%2F%2Fcplint.eu%2F&data=05%7C01%7Cuai%40engr.orst.edu%7C27e72dbd71924b35cda708db0e63c0e9%7Cce6d05e13c5e4d6287a84c4a2713c113%7C0%7C0%7C638119593825510105%7CUnknown%7CTWFpbGZsb3d8eyJWIjoiMC4wLjAwMDAiLCJQIjoiV2luMzIiLCJBTiI6Ik1haWwiLCJXVCI6Mn0%3D%7C3000%7C%7C%7C&sdata=m7AZqirHIeVhlAC71NUvtRE6IfBZLMq6cLEOt%2BdCpxY%3D&reserved=0
 where the code can be run online.
  
  This 2nd edition aims at reporting the most exciting novelties in the field 
since the publication of the 1st edition. The semantics for hybrid programs 
with function symbols was placed on a sound footing. Probabilistic Answer Set 
Programming gained a lot of interest together with studies on the complexity of 
inference. Algorithms for solving the MPE and MAP tasks are now available. 
Inference for hybrid programs has changed dramatically with the introduction of 
Weighted Model Integration.
  
  With respect to learning, the first approaches for neuro-symbolic integration 
have appeared together with algorithms for learning the structure of hybrid 
programs
  
  Moreover, given the cost of learning PLPs, various works proposed language 
restrictions to speed up learning and improve its scaling.
  
  Keywords:
  Probabilistic logic programming, statistical relational learning, statistical 
relational artificial intelligence, distribution semantics, graphical models, 
artificial intelligence, machine learning
_______________________________________________
uai mailing list
uai@engr.orst.edu
https://it.engineering.oregonstate.edu/mailman/listinfo/uai

Reply via email to