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· 분류 : 외국도서 > 컴퓨터 > 인공지능(AI)
· ISBN : 9783031638022
· 쪽수 : 466쪽
· 출판일 : 2024-07-10
목차
.- Explainable AI in healthcare and computational neuroscience.
.- SRFAMap: a method for mapping integrated gradients of a CNN trained with statistical radiomic features to medical image saliency maps.
.- Transparently Predicting Therapy Compliance of Young Adults Following Ischemic Stroke.
.- Precision medicine in student health: Insights from Tsetlin Machines into chronic pain and psychological distress.
.- Evaluating Local Explainable AI Techniques for the Classification of Chest X-ray Images.
.- Feature importance to explain multimodal prediction models. A clinical use case.
.- Identifying EEG Biomarkers of Depression with Novel Explainable Deep Learning Architectures.
.- Increasing Explainability in Time Series Classification by Functional Decomposition.
.- Towards Evaluation of Explainable Artificial Intelligence in Streaming Data.
.- Quantitative Evaluation of xAI Methods for Multivariate Time Series - A Case Study for a CNN-based MI Detection Model.
.- Explainable AI for improved human-computer interaction and Software Engineering for explainability.
.- Influenciae: A library for tracing the influence back to the data-points.
.- Explainability Engineering Challenges: Connecting Explainability Levels to Run-time Explainability.
.- On the Explainability of Financial Robo-advice Systems.
.- Can I trust my anomaly detection system? A case study based on explainable AI..
.- Explanations considered harmful: The Impact of misleading Explanations on Accuracy in hybrid human-AI decision making.
.- Human emotions in AI explanations.
.- Study on the Helpfulness of Explainable Artificial Intelligence.
.- Applications of explainable artificial intelligence.
.- Pricing Risk: An XAI Analysis of Irish Car Insurance Premiums.
.- Exploring the Role of Explainable AI in the Development and Qualification of Aircraft Quality Assurance Processes: A Case Study.
.- Explainable Artificial Intelligence applied to Predictive Maintenance: Comparison of Post-hoc Explainability Techniques.
.- A comparative analysis of SHAP, LIME, ANCHORS, and DICE for interpreting a dense neural network in Credit Card Fraud Detection.
.- Application of the representative measure approach to assess the reliability of decision trees in dealing with unseen vehicle collision data.
.- Ensuring Safe Social Navigation via Explainable Probabilistic and Conformal Safety Regions.
.- Explaining AI Decisions: Towards Achieving Human-Centered Explainability in Smart Home Environments.
.- AcME-AD: Accelerated Model Explanations for Anomaly Detection.