cplint on SWISH
is a web application for trying
probabilistic logic programming
with a Javascript-enabled web browser on any operating system. It was written by
Fabrizio Riguzzi, Riccardo Zese and Giuseppe Cota.
Please use this forum for questions or send an email to cplint@googlegroups.com.
The cplint on
SWISH source is available from
Github. It
requires SWI-Prolog 7 installed from the
latest GIT.
We also provide a Docker image.
The cplint
source is available from
Github.
The source for using R in cplint was developed by Franco Masotti and is available
from
source is available from
Github.
cplint on SWISH is described in:
-
Fabrizio Riguzzi.
Foundations of Probabilistic Logic Programming, River Publishers, Gistrup, Denmark, 2018.
-
Marco Alberti, Elena Bellodi, Giuseppe Cota, Fabrizio Riguzzi, and Riccardo
Zese.
cplint on SWISH: Probabilistic logical inference with a
web browser.
Intelligenza Artificiale, 11(1):47-64, © IOS
Press, 2017.
[ bib |
DOI |
.pdf ]
-
Fabrizio Riguzzi, Elena Bellodi, Evelina Lamma, Riccardo Zese, and Giuseppe
Cota.
Probabilistic logic programming on the web.
Software: Practice and Experience, © Wiley, 2015.
[ bib |
DOI |
.pdf ]
-
Fabrizio Riguzzi, Riccardo Zese, and Giuseppe Cota.
Probabilistic inductive logic programming on the web.
In 20th International Conference on Knowledge Engineering and
Knowledge Management, EKAW 2016; Bologna; Italy; 19 November 2016 through
23 November 2016, volume 10180 of Lecture Notes in Computer Science,
pages 172-175. Springer, Cham, © Springer International
Publishing AG, 2017.
The final publication is available at Springer via
http://dx.doi.org/10.1007/978-3-319-58694-6_25.
[ bib |
DOI |
.pdf ]
The algorithm for exact probabilistic inference (PITA) is described in:
-
Fabrizio Riguzzi and Terrance Swift.
Well-definedness and efficient inference for probabilistic logic
programming under the distribution semantics.
Theory and Practice of Logic Programming, 13(Special Issue 02 -
25th Annual GULP Conference):279-302, © Cambridge University
Press, March 2013.
[ bib |
DOI |
.pdf ]
-
Fabrizio Riguzzi and Terrance Swift.
The PITA system: Tabling and answer subsumption for reasoning under
uncertainty.
Theory and Practice of Logic Programming, 27th International
Conference on Logic Programming (ICLP'11) Special Issue, Lexington, Kentucky
6-10 July 2011, 11(4-5):433-449, © Cambridge University
Press, 2011.
[ bib |
DOI |
.pdf ]
-
Fabrizio Riguzzi and Terrance Swift.
Tabling and Answer Subsumption for Reasoning on Logic
Programs with Annotated Disjunctions.
In M. Hermenegildo and T. Schaub, editors, Technical
Communications of the 26th Int'l. Conference on Logic Programming (ICLP'10),
volume 7 of Leibniz International Proceedings in Informatics (LIPIcs),
pages 162-171, Dagstuhl, Germany, July 2010. License Creative Commons
Attribution-Noncommercial-No Derivative Works 3.0, Schloss
Dagstuhl-Leibniz-Zentrum fuer Informatik.
[ bib |
DOI |
http ]
The algorithm for Monte Carlo inference (MCINTYRE) is described in:
-
Fabrizio Riguzzi.
MCINTYRE: A Monte Carlo system for probabilistic logic
programming.
Fundamenta Informaticae, 124(4):521-541, © IOS
Press, 2013.
[ bib |
DOI |
.pdf ]
The algorithm for Metropolis/Hastings sampling is described in:
-
Arun Nampally and C. R. Ramakrishnan.
Adaptive MCMC-Based Inference in Probabilistic Logic Programs.
arXiv preprint arXiv:1403.6036, 2014.
[ .pdf ]
The algorithm for parameter learning (EMBLEM) is described in:
- Elena Bellodi and Fabrizio Riguzzi.
Expectation Maximization over binary decision diagrams for
probabilistic logic programs.
Intelligent Data Analysis, 17(2):343-363, © IOS
Press, 2013.
[ bib |
DOI |
http |
.pdf ]
-
Elena Bellodi and Fabrizio Riguzzi.
Experimentation of an expectation maximization algorithm for
probabilistic logic programs.
Intelligenza Artificiale, 8(1):3-18, © IOS
Press, 2012.
[ bib |
DOI |
.pdf ]
The SLIPCOVER algorithm for structure learning is described in:
-
Elena Bellodi and Fabrizio Riguzzi.
Structure learning of probabilistic logic programs by searching the
clause space.
Theory and Practice of Logic Programming, 15(2):169-212,
© Cambridge University Press, 2015.
[ bib |
DOI |
http |
http ]
The LEMUR algorithm for structure learning is described in:
-
Nicola Di Mauro, Elena Bellodi, and Fabrizio Riguzzi.
Bandit-based Monte-Carlo structure learning of probabilistic logic programs.
Machine Learning, 100(1):127-156, © Springer International Publishing, July 2015.
[ bib |
DOI |
pdf ]
TRILL on SWISH is a web application for trying
probabilistic semantic web reasoning with a web browser on
any operating system. It was written by Riccardo Zese and Fabrizio Riguzzi.
Please use this forum for questions or send an email to trill-system@googlegroups.com.
SWISH was originally written by Torbjörn Lager
as a homage to SWI-Prolog. Jan Wielemaker designed and implemented the
present version. The current SWISH
application targets primarily at collaborative exploration of data. SWISH
can be combined with e.g., CQL to explore
relational (SQL) databases or sparkle to
explore linked data. A ClioPatria
plugin adds Prolog based exploration of RDF data to ClioPatria.
SWISH is a great tool for teaching Prolog.
We provide a prototype of
Learn Prolog Now! where SWISH is embedded to run examples and solve
excercises from within your browser. Peter Flach prepared his book
Simply Logical for
SWISH.
The TRILL on SWISH source is available from Github.
It requires SWI-Prolog installed from the latest GIT.
The TRILL
source is available from
Github.
The SWISH source is available from Github. It is under
heavy development and often requires SWI-Prolog 7 installed from the
latest GIT.
We also provide a Docker image.
Avatar graphics created by Noble
Master Games, designed by
Mei-Li Nieuwland.
The SWISH source is available from Github.