Table of contents : Preface Workshop Description Organization Contents Oral Presentation On the Usage and Performance of the Hierarchical Vote Collective of Transformation-Based Ensembles Version 1.0 (HIVE-COTE v1.0) 1 Introduction 2 HIVE-COTE 1.0 Design 2.1 Ensemble Structure 2.2 Time Series Forest (TSF) 2.3 Random Interval Spectral Ensemble (RISE) 2.4 Bag of SFA Symbols (BOSS) 2.5 Shapelet Transform Classifier (STC) 3 HIVE-COTE 1.0 Usability 3.1 Java Implementation of HIVE-COTE 1.0 in tsml 3.2 Python Implementation of HIVE-COTE 1.0 in sktime 4 Performance 5 Conclusions References Ordinal Versus Nominal Time Series Classification 1 Introduction 2 Background 2.1 Time Series Shapelets 2.2 Ordinal Classification 3 Experimental Results and Discussion 3.1 TSOC Datasets 3.2 Experimental Settings 3.3 Results 3.4 Comparison Against the State-of-the-Art Algorithms in TSC 4 Conclusions References Generalized Chronicles for Temporal Sequence Classification 1 Introduction 2 Related Works 3 Discriminant Chronicle Mining 4 Generalized Discriminant Chronicles (GDC) 4.1 Taking Decisions with Generalized Discriminant Chronicles 4.2 Learning Generalized Discriminant Chronicles Classifiers 5 Examples of GDC Instances 6 Experiments 6.1 Experimental Setup 6.2 Results 7 Conclusion and Perspectives References Demand Forecasting in the Presence of Privileged Information 1 Introduction 2 Related Work 3 A Privileged Information-Aware Neural Network 3.1 Problem Statement 3.2 Architecture Overview 3.3 Architecture Details 3.4 Learning Process 4 Experimental Setup 5 Experimental Results 5.1 Capturing the Effects of Privileged Information 5.2 Comparison to Existing Approaches for Demand Forecasting 6 Conclusions and Future Work References GANNSTER: Graph-Augmented Neural Network Spatio-Temporal Reasoner for Traffic Forecasting 1 Introduction 2 Related Work 2.1 Traffic Forecasting 2.2 Graph Neural Networks 2.3 Graph Neural Networks for Traffic Forecasting 3 GANNSTER 3.1 Road Graph 3.2 Definitions 3.3 GANNSTER Model 4 Experimental Evaluation 4.1 MUSTARD-S 4.2 Experimental Settings 5 Results and Discussion 6 Conclusion and Future Work References A Model-Agnostic Approach to Quantifying the Informativeness of Explanation Methods for Time Series Classification 1 Introduction 2 Related Work 2.1 Time Series Classification 2.2 Explanation in Time Series Classification 2.3 Explanation in Other Machine Learning Domains 3 Research Methods 3.1 Explanation-Driven Perturbation 3.2 Method 1: Evaluating a Single Explanation Method 3.3 Method 2: Comparing Multiple Explanation Methods 3.4 Informativeness of an Explanation: An Evaluation Measure 4 Experiments 4.1 Experiment 1: Evaluation of a Single Explanation Method 4.2 Comparison of Multiple Explanation Methods 4.3 Sanity Checks for Experiment Results 5 Discussion 6 Conclusion References Poster Presentation Temporal Exceptional Model Mining Using Dynamic Bayesian Networks 1 Introduction 2 Motivating Example: The Business Process Intelligence Challenge 3 Temporal Exceptional Model Mining 3.1 Temporal Targets 3.2 Subgroups 3.3 Problem Statement 4 Exceptional Dynamic Bayesian Networks 4.1 Dynamic Bayesian Networks 4.2 Distance Function 4.3 Scoring Function 4.4 Exceptional Subgroups 4.5 Distribution of False Discoveries 4.6 Subgroup Search 4.7 Exceptionality Test 5 Experiments with Simulated Data 5.1 Data Generating Procedure 5.2 Evaluation 5.3 Results 5.4 Impact of (dis)similar Models on Prediction 6 Data of Funding Applications 6.1 Data 6.2 Discovered Subgroups 6.3 Comparison to Previous Analyses 6.4 Subgroup Differences 7 Related Work 8 Conclusions References ``J'veux du Soleil'' Towards a Decade of Solar Irradiation Data (La Réunion Island, SW Indian Ocean) 1 Introduction 2 Data Acquisition 2.1 Measuring Irradiation and Meteorological Parameters 3 Available Data 4 Valuable Applications 5 Conclusion A Technical Setup References Visual Analytics for Extracting Trends from Spatio-temporal Data 1 Introduction 2 Rationale and Related Work 2.1 Rationale 2.2 Related Work 3 Methods 3.1 Cluster Analysis 3.2 Temporal Fingerprinting Through Circular Heat Maps 3.3 Spatio-temporal Comparison Through Circular Heat Map Subtraction 3.4 Temporal Behaviour Characterisation Through Label Maps 4 Case Study on Brussels Traffic 4.1 Data 4.2 Unravelling Volume Patterns of Brussels Traffic 4.3 Insightful Blueprints of Brussels Traffic 5 Conclusion and Future Work References Layered Integration Approach for Multi-view Analysis of Temporal Data 1 Introduction 2 Related Work and Rationale 2.1 Challenges Related to Real-World Datasets 2.2 Multi-view Learning 3 Use Case Context and Ambition 4 Methods and Proposed Approach 4.1 Clustering Analysis 4.2 Kernel Density Estimation (KDE) 4.3 Hypercube Binning Approach 4.4 Layered Multi-view Analysis: General Approach 4.5 Layered Multi-view Analysis: Instantiated in the Use Case 5 Dataset and Implementation 5.1 Data Preprocessing 5.2 Implementation and Availability 6 Results and Discussion 6.1 Individual Analysis Layer: Operating Mode Characterisation 6.2 Mediation Layer: Performance Profiling 6.3 Integration Layer: Fleet-Wide Performance Labelling 7 Conclusion and Future Work References Real-Time Outlier Detection in Time Series Data of Water Sensors 1 Introduction 2 Data Overview 3 Experiment Setup 3.1 Outlier Detection Pipeline 3.2 Synthetic Evaluation 4 Modelling and Hyper-Parameter Tuning 4.1 Regression-Based Models 4.2 Neural Network-Based Approaches 4.3 Direct Classification Model: Isolation Forests (IF) 5 Results 5.1 Illustrative Examples: Univariate Results 5.2 Illustrative Example: Multivariate Results QR-MLP 5.3 Comparison of Univariate and Multivariate Modelling Techniques 5.4 Comparison of Multivariate Modelling Techniques 5.5 Practical Impact 6 Conclusion and Future Work References Lightweight Temporal Self-attention for Classifying Satellite Images Time Series 1 Introduction 2 Method 2.1 Multi-headed Self-attention 2.2 Lightweight Attention 2.3 Spatio-Temporal Classifier 3 Numerical Experiment 3.1 Dataset 3.2 Metric and Protocol 3.3 Evaluated Methods 3.4 Analysis 3.5 Ablation Study and Robustness Assessment 3.6 Computational Complexity 4 Conclusion References Creating and Characterising Electricity Load Profiles of Residential Buildings 1 Introduction 2 Related Work 3 Smart Meter Characterisation and Classification Problem 4 Methodology 4.1 Time Series Clustering 4.2 Survey Classification 5 Experimental Results 5.1 Feature Vectors 5.2 Behaviour Clusters 5.3 Cluster Classification 5.4 Feature Importance 6 Conclusions A Survey Questions References Trust Assessment on Streaming Data: A Real Time Predictive Approach 1 Introduction 2 Related Work 3 Data Trustworthiness Online Model: DTOM 3.1 Problem Statement 3.2 Design and Implementation 3.3 Online Ensemble Regression 4 Experimentation 4.1 Experimental Dataset 4.2 Evaluation 4.3 Results 5 Conclusion References A Feature Selection Method for Multi-dimension Time-Series Data 1 Introduction 2 Feature Selection 2.1 Correlation Based Feature Selection Using Mutual Information 2.2 Feature Selection for Time-Series Data 3 CFS for Time-Series Data 4 Evaluation 4.1 Data Sets 4.2 Merit Score Evaluation 4.3 Feature Subset Selection 5 Conclusions and Future Work References Author Index