International audienceCompilation into propositional languages finds a growing number of practical uses, including in constraint programming, diagnosis and machine learning (ML), among others. One concrete example is the use of propositional languages as classifiers, and one natural question is how to explain the predictions made. This paper shows that for classifiers represented with some of the best-known propositional languages, different kinds of explanations can be computed in polynomial time. These languages include deterministic decomposable negation normal form (d-DNNF), and so any propositional language that is strictly less succinct than d-DNNF. Furthermore, the paper describes optimizations, specific to Sentential Decision Diagra...
International audienceDecision lists (DLs) find a wide range of uses for classification problems in ...
collocated Eighteenth Conference on Innovative Applications of Artificial Intelligence (IAAI-06)Inte...
International audienceRecent work has shown that not only decision trees (DTs) may not be interpreta...
International audienceCompilation into propositional languages finds a growing number of practical u...
Compilation into propositional languages finds a growing number of practical uses, including in cons...
Knowledge compilation (KC) languages find a growing number of practical uses, including in Constrain...
International audienceExplaining decisions is at the heart of explainable AI. We investigate the com...
We present a compiler for converting CNF formulas into de-terministic, decomposable negation normal ...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
International audienceChoosing a language for knowledge representation and reasoning involves a trad...
International audienceWe investigate efficient representations of subjective formulas in the modal l...
International audienceSubsets of the Negation Normal Form formulas (NNFs) of propositional logic hav...
International audienceKnowledge compilation studies the trade-off between succinctness and efficienc...
Knowledge compilation algorithms transform a probabilistic logic program into a circuit representati...
Recent years have witnessed a renewed interest in Boolean function in explaining binary classifiers ...
International audienceDecision lists (DLs) find a wide range of uses for classification problems in ...
collocated Eighteenth Conference on Innovative Applications of Artificial Intelligence (IAAI-06)Inte...
International audienceRecent work has shown that not only decision trees (DTs) may not be interpreta...
International audienceCompilation into propositional languages finds a growing number of practical u...
Compilation into propositional languages finds a growing number of practical uses, including in cons...
Knowledge compilation (KC) languages find a growing number of practical uses, including in Constrain...
International audienceExplaining decisions is at the heart of explainable AI. We investigate the com...
We present a compiler for converting CNF formulas into de-terministic, decomposable negation normal ...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
International audienceChoosing a language for knowledge representation and reasoning involves a trad...
International audienceWe investigate efficient representations of subjective formulas in the modal l...
International audienceSubsets of the Negation Normal Form formulas (NNFs) of propositional logic hav...
International audienceKnowledge compilation studies the trade-off between succinctness and efficienc...
Knowledge compilation algorithms transform a probabilistic logic program into a circuit representati...
Recent years have witnessed a renewed interest in Boolean function in explaining binary classifiers ...
International audienceDecision lists (DLs) find a wide range of uses for classification problems in ...
collocated Eighteenth Conference on Innovative Applications of Artificial Intelligence (IAAI-06)Inte...
International audienceRecent work has shown that not only decision trees (DTs) may not be interpreta...