Pietro Totis
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Declarative Modelling and Reasoning for Combinatorial Problem Solving and Argumentation under Uncertainty
Mar 8, 2023 1:30 PM — 3:30 PM
aula van de Tweede Hoofdwet, 01.02
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Understanding ProbLog as Probabilistic Argumentation
We show that ProbLog is an instance of a form of Probabilistic Abstract Argumentation (PAA) that builds upon Assumption-Based Argumentation (ABA). The connections pave the way towards equipping ProbLog with alternative semantics, inherited from PAA and ABA.
Francesca Toni
,
Nico Potyka
,
Markus Ulbricht
,
Pietro Totis
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Reasoning on Arguments and Beliefs with Probabilistic Logic Programs
Dec 8, 2022 3:00 PM — 4:00 PM
CLArg Group, Department of Computing
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Stable Model Semantics in ProbLog and its Applications in Argumentation
A presentation on my research about Probabilistic Logic Programming and Argumentation
Feb 21, 2022 4:00 PM — 5:00 PM
Online event
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Efficient Knowledge Compilation Beyond Weighted Model Counting
We introduce second level algebraic model counting (2AMC) problems, a framework generalizing several probabilistic inference task. We present a novel Knowledge Compilation technique to address the increased complexity of a 2AMC task with respect to first-level AMC problems.
Rafael Kiesel
,
Pietro Totis
,
Angelika Kimmig
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Mapping Probability Word Problems to Executable Representations
We analyze different neural models to solve probability math word problems in two ways. First, to predict directly the answer in an end-to-end fashion. Second, to map the text to a formal representation used by a probabilistic programming system to compute the answer.
Simon Suster
,
Pieter Fivez
,
Pietro Totis
,
Angelika Kimmig
,
Jesse Davis
,
Luc De Raedt
,
Walter Daelemans
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smProbLog: Stable Model Semantics in ProbLog for Probabilistic Argumentation
We model beliefs in argumentation problems with probabilistic logic programs and show that traditional probabilistic logic programming (PLP) systems cannot reason on this type of programs. We thus present smProblog, a novel PLP system based on ProbLog, where inference and learning over such probabilistic argumentation problems are possible.
Pietro Totis
,
Angelika Kimmig
,
Luc De Raedt
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