
Data Science and Machine Learning
Description
Alles über E-Books | Antworten auf Fragen rund um E-Books, Kopierschutz und Dateiformate finden Sie in unserem Info- & Hilfebereich.
This book constitutes the proceedings of the 23rd Australasian Conference on Data Science and Machine Learning, AusDM 2025, held in Brisbane, Australia, during November 26-28, 2025.
The 37 full papers presented in this book were carefully reviewed and selected from 99 submissions. The papers are organized in the following topical sections: (1) Federated, Adaptive and Trustworthy Machine Learning; (2) Environment, Information Security and Productivity; (3) Deep Learning Fusion and Vision; (4) Health and Social Good and (5) Knowledge-Driven and Domain Specific AI. They deal with topics around data science, machine learning and also AI in everyday life.
More details
Other editions
Additional editions

Content
.- Federated, Adaptive, and Trustworthy Machine Learning.
.- DAARA: Divergence-Aware Attention for Robust Aggregation in Federated Learning Against Poisoning Attacks.
.- Understanding the Asymmetric Impact of Forecast Accuracy on Decision Quality.
.- WaveFSL: Wave Interference-Based Meta-Learning for Few-Shot Cross-Modality Traffic Forecasting.
.- FedMOAR: Multi-Objective Adaptive Regularization for Fair and Efficient Federated Learning.
.- Unveiling Reliability in Multi-Omics Classification:Fusion, Calibration, and Dynamic Scaling.
.- Stability Evaluation of Clusterings Across Time.
.- DriftSense: Adaptive Drift Detection with Incremental Hoeffding Trees for Real-Time Spatial Crowdsourcing.
.- Dynamic Meta-Learning Ensemble for Financial Forecasting.
.- Environment, Information Security and Productivity.
.- Effective Missing-Data Imputation for Time Series with Seasonality and Causality.
.- UniCausal: A Unified Approach to Causal Discovery from Hybrid Industrial Time Series and Events.
.- Dynamic Source Code Vulnerability Characteristics Selection for Enhanced Vulnerability Discover.
.- Modelling Financial Time Series of Returns and Covariance Matrices Using Time-Space Transformers.
.- Temporal Fusion of Biophysical and Climate Data: A Data-Driven Hybrid Learning Approach for Short-Term Aboveground Biomass Forecasting.
.- Precision to Costing: Budgeted Modelling for Customer Contact Prediction.
.- Defining Responsible AI: Contextual Insights Powered by LLMs.
.- Deep Learning Fusion and Vision.
.- Fusing Deep Object Detectors via Spatial Heatmap-Based Relevance Modeling.
.- CarDamageEval: Benchmark Evaluation of Car Damage Assessment Using Vision Language Models.
.- Regularizing StyleGAN with Inter-Resolution Residual Pattern Consistency via a Laplacian Pyramid.
.- Mixup and Local-FOMA based Two-Phase Manifold Augmentation in Image Classification.
.- BARE: Boundary-Aware with Resolution Enhancement for Tree Crown Delineation.
.- Integrating Vision Transformers and Autoencoders for Interpretable Cancer Risk Assessment.
.- LightSkinNet: Lightweight CNN with Attention for Accurate,Mobile-Efficient Multiclass Skin Lesion Classification.
.- A DenseNet-YOLOv8 Fusion Model for Intelligent Parasite Egg Detection and Classification.
.- Health and Social Good.
.- An AI-Driven Framework for Real-Time Reporting and Identification of Lost Cats.
.- Benchmarking Preprocessing and Integration Methods in Single-Cell Genomics.
.- Towards Automated Differential Diagnosis of Skin Diseases Using Deep Learning and Imbalance-Aware Strategies.
.- Causal Recommendation Method for Personalised Chemotherapy Optimisation in Breast Cancer.
.- Machine Learning for Traffic Accident Prediction: Integrating Spatial and Behavioral Data for Road Safety
Insights.
.- Visionary: Enhancing Visual Context for the Visually Impaired.
.- Knowledge-Driven and Domain Specific AI.
.- Advancing Atayal Language Preservation with AI-Driven Multimodal Speech and Text Processing.
.- ETCOD: Embedding-Based Anomaly Detection and LLM-Driven Validation Framework for Knowledge Graphs.
.- Top-k Ranking with Exact Positional Fairness.
.- Evaluating Structural Preprocessing in RAG for Academic Curriculum Applications.
.- Evaluating Cross-Lingual Classification Strategies EnablingTopic Discovery for Multilingual Social Media Data.
.- From Burst to Routine: Mining Time-Compact Patterns from Sequential Dataset.
.- A Parameter-free Method Tuning for Multi-scale Wildfire Images Retrieval Task.
.- NeuroPhysNet: A FitzHugh-Nagumo-Based Physics-InformedNeural Network Framework for Electroencephalograph (EEG)Analysis and Motor Imagery Classification.
System requirements
File format: PDF
Copy protection: Watermark-DRM (Digital Rights Management)
System requirements:
- Computer (Windows; MacOS X; Linux): Use the free software Adobe Reader, Adobe Digital Editions, or any other PDF viewer of your choice (see eBook Help).
- Tablet/Smartphone (Android; iOS): Install the free app Adobe Digital Editions or another reading app for eBooks, e.g., PocketBook (see eBook Help).
- E-reader: Bookeen, Kobo, Pocketbook, Sony, Tolino and many more (only limited: Kindle).
The file format PDF always displays a book page identically on any hardware. This makes PDF suitable for complex layouts such as those used in textbooks and reference books (images, tables, columns, footnotes). Unfortunately, on the small screens of e-readers or smartphones, PDFs are rather annoying, requiring too much scrolling.
This eBook uses Watermark-DRM, a „soft” copy protection. This means that there are no technical restrictions to prevent illegal distribution. However, there is a personalised watermark embedded in the eBook that can be used to identify the purchaser of the eBook in the event of misuse and to provide evidence for legal purposes.
For more information, see our eBook Help page.