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Explainable artificial intelligence

XAI refers to methods and techniques in the application of artificial intelligence (AI) such that the results of the solution can be understood by humans. It contrasts with the concept of the "black box" in machine learning where even its designers cannot explain why an AI arrived at a specific decision. XAI may be an implementation of the social right to explanation. XAI is relevant even if there is no legal right or regulatory requirement—for example, XAI can improve the user experience of a product or service by helping end users trust that the AI is making good decisions. This way the aim of XAI is to explain what has been done, what is done right now, what will be done next and unveil the information the actions are based on. These characteristics make it possible (i) to confirm existing knowledge (ii) to challenge existing knowledge and (iii) to generate new assumptions.

Papers

Showing 901925 of 971 papers

TitleStatusHype
The Effect of Balancing Methods on Model Behavior in Imbalanced Classification ProblemsCode0
An Interaction-based Convolutional Neural Network (ICNN) Towards Better Understanding of COVID-19 X-ray ImagesCode0
Relevant Irrelevance: Generating Alterfactual Explanations for Image ClassifiersCode0
REPEAT: Improving Uncertainty Estimation in Representation Learning ExplainabilityCode0
LIMEtree: Consistent and Faithful Multi-class ExplanationsCode0
End-to-end Stroke imaging analysis, using reservoir computing-based effective connectivity, and interpretable Artificial intelligenceCode0
Eliminating The Impossible, Whatever Remains Must Be TrueCode0
Explaining Deep Learning Models for Age-related Gait Classification based on time series accelerationCode0
EAG-RS: A Novel Explainability-guided ROI-Selection Framework for ASD Diagnosis via Inter-regional Relation LearningCode0
Improving Deep Neural Network Classification Confidence using Heatmap-based eXplainable AICode0
Explaining How Deep Neural Networks Forget by Deep VisualizationCode0
An Experimental Investigation into the Evaluation of Explainability MethodsCode0
Explaining Local, Global, And Higher-Order Interactions In Deep LearningCode0
An Empirical Comparison of Explainable Artificial Intelligence Methods for Clinical Data: A Case Study on Traumatic Brain InjuryCode0
REVEX: A Unified Framework for Removal-Based Explainable Artificial Intelligence in VideoCode0
Local Explanation of Dimensionality ReductionCode0
Local Explanations via Necessity and Sufficiency: Unifying Theory and PracticeCode0
FreqRISE: Explaining time series using frequency maskingCode0
Watermarking Counterfactual ExplanationsCode0
Locally-Minimal Probabilistic ExplanationsCode0
ExplainReduce: Summarising local explanations via proxiesCode0
Addressing the Scarcity of Benchmarks for Graph XAICode0
Why model why? Assessing the strengths and limitations of LIMECode0
Concept backpropagation: An Explainable AI approach for visualising learned concepts in neural network modelsCode0
Do Protein Transformers Have Biological Intelligence?Code0
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