Machine Learning and Principles and Practice of Knowledge Discovery in Databases

Machine Learning and Principles and Practice of Knowledge Discovery in Databases

International Workshops of ECML PKDD 2023, Turin, Italy, September 18-22, 2023, Revised Selected Papers, Part III

Meo, Rosa; Silvestri, Fabrizio

Springer International Publishing AG

11/2024

555

Mole

9783031746321

Pré-lançamento - envio 15 a 20 dias após a sua edição

Descrição não disponível.
.- XAI-TS: Explainable AI for Time Series: Advances and Applications.



.- Introducing the Attribution Stability Indicator: a Measure for Time Series XAI Attributions.



.- LMFD: Latent Monotonic Feature Discovery.



.- LinC: Explaining Time Series Clusterings with User-Provided Constraints.



.- Explainable Long- and Short-term Pattern Detection in Projected Sequential Data.



.- XKDD 2023: 5th International Workshop on eXplainable Knowledge Discovery in Data Mining.



.- Matching the expert's knowledge via a counterfactual-based feature importance measure.



.- Explaining Fatigue in Runners Using Time Series Analysis on Wearable Sensor Data.



.- Wave Top-k Random-d Family Search: How to Guide an Expert in a Structured Pattern Space.



.- Diffusion-based Visual Counterfactual Explanations - Towards Systematic Quantitative Evaluation.



.- Exploring gender bias in misclassification with clustering and local explanations.



.- Are Generative-based Graph Counterfactual Explainers Worth It?.



.- FIPER: a Visual-based Explanation Combining Rules and Feature Importance.



.- Manipulation Risks in Explainable AI: The Implications of the Disagreement Problem.



.- Using Graph Neural Networks for the Detection and Explanation of Network Intrusions.



.- Game Theoretic Explanations for Graph Neural Networks.



.- From Black Box to Glass Box: Evaluating the Faithfulness of Process Predictions with GCNNs.



.- A New Class of Intelligible Models for Tabular Learning.



.- Deep Learning for Sustainable Precision Agriculture.



.- Plant Disease Detection using Deep Learning: A.



.- Proof of Concept on Pear Leaf Disease Detection.



.- Modelling Solar PV Adoption in Irish Dairy Farms using Agent-Based Modelling.



.- Deep Networks based Approach for Automatic Counting Panicles on UAV captured Paddy RGB Imagery.



.- The ACRE Crop-Weed Dataset for Benchmarking Weed Detection Models on Maize and Beans Fields.



.- Integrating Renewable Energy in Agriculture: A Deep Reinforcement Learning-based Approach.



.- Knowledge Guided Machine Learning.



.- Unsupervised Ontology- and Taxonomy Construction through Hyperbolic Relational Domains and Ranges.



.- A Filter-based Neural ODE Approach for Modelling Natural Systems with Prior Knowledge Constraints.



.- Towards Automatically Refining Low-Quality Domain Knowledge: A Case Study in Healthcare.



.- Lorentz-invariant augmentation for high-energy physics deep learning models.



.- Discovering SpatioTemporal Warning Contexts from Non-Emergency Call Reports.



.- SEEDOT: Tool for Enhancing Sentiment Lexicon with Machine Learning.



.- MACLEAN: MAChine Learning for EArth ObservatioN.



.- Detection and semantic description of changes in Earth Observation Time Series data.



.- Low-rank hierarchical clustering of PRISMA hyperspectral images to identify burned areas.



.- Next day fire prediction via semantic segmentation.



.- Robust Burned Area Delineation through Multitask Learning.



.- Burnt area extraction from high-resolution satellite images based on anomaly detection.



.- Seasonal average temperature forecast with the AutoGluonTS modern autoML tool.



.- MLG: Mining and Learning with Graphs.



.- Curvature-based Pooling within Graph Neural Networks.



.- Finding coherent node groups in directed graphs.



.- Neuro Explicit AI and Expert Informed ML for Engineering and Physical Sciences.



.- Constructing Neural Forms for Hard-Constraint PINNs with Complex Dirichlet Boundaries.



.- Enhancing generability: AutoML for robust denoising of strong gravitational lens systems.



.- Data-Efficient Interactive Multi-Objective Optimization Using ParEGO.



.- New Frontiers in Mining Complex Patterns.



.- Striving for Simplicity in Deep Neural Models Trained for Malware Detection.



.- On the Effectiveness of Non-negative Matrix Factorization for Text Open-set Recognition.



.- Real-time Anomaly Prediction from Cryptocurrency Time Series.



.- A Joint Analysis of Trajectory Mining and Process Mining for Smartphone User Behaviour.



.- Towards Automation of Pollen Monitoring - Dealing with the Background in Pollen Monitoring Images.
artificial intelligence;computer security;data security;distributed systems;software design;software engineering;neural networks;bayesian networks;computer vision;data mining;fuzzy sets;information retrieval;semantics;inference engines;image processing