Explainable AI (XAI): Core ideas, techniques, and solutions
As our dependence on intelligent machines continues to grow, so does the demand for more
transparent and interpretable models. In addition, the ability to explain the model generally …
transparent and interpretable models. In addition, the ability to explain the model generally …
The challenge of crafting intelligible intelligence
The challenge of crafting intelligible intelligence Page 1 70 COMMUNICATIONS OF THE
ACM | JUNE 2019 | VOL. 62 | NO. 6 review articles ARTIFICIAL INTELLIGENCE (AI) systems …
ACM | JUNE 2019 | VOL. 62 | NO. 6 review articles ARTIFICIAL INTELLIGENCE (AI) systems …
Neuro-symbolic artificial intelligence
Abstract Neuro-Symbolic Artificial Intelligence–the combination of symbolic methods with
methods that are based on artificial neural networks–has a long-standing history. In this …
methods that are based on artificial neural networks–has a long-standing history. In this …
Neural-symbolic integration and the semantic web
Abstract Symbolic Systems in Artificial Intelligence which are based on formal logic and
deductive reasoning are fundamentally different from Artificial Intelligence systems based on …
deductive reasoning are fundamentally different from Artificial Intelligence systems based on …
Ontology engineering: Current state, challenges, and future directions
T Tudorache - Semantic Web, 2020 - content.iospress.com
In the last decade, ontologies have become widely adopted in a variety of fields ranging
from biomedicine, to finance, engineering, law, and cultural heritage. The ontology …
from biomedicine, to finance, engineering, law, and cultural heritage. The ontology …
From statistical relational to neurosymbolic artificial intelligence: A survey
This survey explores the integration of learning and reasoning in two different fields of
artificial intelligence: neurosymbolic and statistical relational artificial intelligence …
artificial intelligence: neurosymbolic and statistical relational artificial intelligence …
Semantic referee: A neural-symbolic framework for enhancing geospatial semantic segmentation
Understanding why machine learning algorithms may fail is usually the task of the human
expert that uses domain knowledge and contextual information to discover systematic …
expert that uses domain knowledge and contextual information to discover systematic …
Knowledge enhanced neural networks
A Daniele, L Serafini - PRICAI 2019: Trends in Artificial Intelligence: 16th …, 2019 - Springer
Abstract We propose Knowledge Enhanced Neural Networks (KENN), an architecture for
injecting prior knowledge, codified by a set of logical clauses, into a neural network. In …
injecting prior knowledge, codified by a set of logical clauses, into a neural network. In …
Knowledge enhanced neural networks for relational domains
A Daniele, L Serafini - International Conference of the Italian Association …, 2022 - Springer
In the recent past, there has been a growing interest in Neural-Symbolic Integration
frameworks, ie, hybrid systems that integrate connectionist and symbolic approaches to …
frameworks, ie, hybrid systems that integrate connectionist and symbolic approaches to …
On the design of PSyKI: a platform for symbolic knowledge injection into sub-symbolic predictors
A long-standing ambition in artificial intelligence is to integrate predictors' inductive features
(ie, learning from examples) with deductive capabilities (ie, drawing inferences from …
(ie, learning from examples) with deductive capabilities (ie, drawing inferences from …