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 V
Silvestri, Fabrizio; Meo, Rosa
Springer International Publishing AG
01/2025
492
Mole
9783031746420
Pré-lançamento - envio 15 a 20 dias após a sua edição
.- Contextual Data Augmentation for Task-Oriented Dialog Systems.
.- Fairness of ChatGPT and the Role Of Explainable-Guided Prompts.
.- Deep learning meets Neuromorphic Hardware.
.- Non-Dissipative Propagation by Randomized Anti-Symmetric Deep Graph Networks.
.- On the Noise Robustness of Analog Complex-Valued Neural Networks.
.- Neu-BrAuER: a neuromorphic Braille letters audio-reader for commercial edge devices.
.- Discovery challenge.
.- Transductive Fire-affected Area Segmentation with False-Color Data.
.- Post Wildfire Burnt-up Detection using Siamese UNet.
.- Predicting Exoplanetary Features with a Residual Model for Uniform and Gaussian Distributions.
.- Reproducing Bayesian Posterior Distributions for Exoplanet Atmospheric Parameter Retrievals with a Machine Learning Surrogate Model.
.- Simulation-based Inference for Exoplanet Atmospheric Retrieval: Insights from winning the Ariel Data Challenge 2023 using Normalizing Flows.
.- ITEM: IoT, Edge, and Mobile for Embedded Machine Learning.
.- Implications of Noise in Resistive Memory on Deep Neural Networks for Image Classification.
.- Evaluating custom-precision operator support in MLIR for ARM CPUs.
.- microYOLO: Towards Single-Shot Object Detection on Microcontrollers.
.- OptiSim: A Hardware-Aware Optimization Space Exploration Tool for CNN Architectures.
.- On the Non-Associativity of Analog Computations.
.- Quantized dynamics models for hardware-efficient control and planning in model-based RL.
.- LIMBO - LearnIng and Mining for BlOckchains.
.- Temporal and Geographical Analysis of Real Economic Activities in the Bitcoin Blockchain.
.- Machine Learning for Cybersecurity (MLCS 2023).
.- A source separation approach to temporal graph modelling for computer networks.
.- Quantum Machine Learning for Malware Classification.
.- Side-channel Based Intrusion Detection for Network Equipment.
.- I See Dead People: Gray-Box Adversarial Attack on Image-To-Text Models.
.- Concept Drift Detection using Ensemble of Integrally Private Models.
.- MIDAS - The 8th Workshop on MIning DAta for financial applicationS.
.- ViBERTgrid BiLSTM-CRF: Multimodal Key Information Extraction from Unstructured Financial Documents.
.- Comparing Deep RL and Traditional Financial Portfolio Methods - Full paper.
.- Occupational Fraud Detection through Agent-based Data Generation.
.- Stock Price Time Series Forecasting Using Dynamic Graph Neural Networks and Attention Mechanism in Recurrent Neural Networks.
.- Flexible Tails for Normalising Flows, with Application to the Modelling of Financial Return Data.
.- Exploring Alternative Data for Nowcasting: A Case Study on US GDP using Topic Attention.
.- Topology-Agnostic Detection of Temporal Money Laundering Flows in Billion-Scale Transactions.
.- Boosting Credit Risk Data Quality using Machine Learning and eXplainable AI Techniques.
.- Ensemble methods for Stock Market Prediction.
.- Workshop on Advancements in Federated Learning.
.- Federated Learning with Neural Graphical Models.
.- On improving accuracy in Federated Learning using GANs-based pre-training and Ensemble Learning.
.- Re-evaluating the Privacy Benefit of Federated Learning.
.- Parameterizing Federated Continual Learning for Reproducible Research.
.- Contextual Data Augmentation for Task-Oriented Dialog Systems.
.- Fairness of ChatGPT and the Role Of Explainable-Guided Prompts.
.- Deep learning meets Neuromorphic Hardware.
.- Non-Dissipative Propagation by Randomized Anti-Symmetric Deep Graph Networks.
.- On the Noise Robustness of Analog Complex-Valued Neural Networks.
.- Neu-BrAuER: a neuromorphic Braille letters audio-reader for commercial edge devices.
.- Discovery challenge.
.- Transductive Fire-affected Area Segmentation with False-Color Data.
.- Post Wildfire Burnt-up Detection using Siamese UNet.
.- Predicting Exoplanetary Features with a Residual Model for Uniform and Gaussian Distributions.
.- Reproducing Bayesian Posterior Distributions for Exoplanet Atmospheric Parameter Retrievals with a Machine Learning Surrogate Model.
.- Simulation-based Inference for Exoplanet Atmospheric Retrieval: Insights from winning the Ariel Data Challenge 2023 using Normalizing Flows.
.- ITEM: IoT, Edge, and Mobile for Embedded Machine Learning.
.- Implications of Noise in Resistive Memory on Deep Neural Networks for Image Classification.
.- Evaluating custom-precision operator support in MLIR for ARM CPUs.
.- microYOLO: Towards Single-Shot Object Detection on Microcontrollers.
.- OptiSim: A Hardware-Aware Optimization Space Exploration Tool for CNN Architectures.
.- On the Non-Associativity of Analog Computations.
.- Quantized dynamics models for hardware-efficient control and planning in model-based RL.
.- LIMBO - LearnIng and Mining for BlOckchains.
.- Temporal and Geographical Analysis of Real Economic Activities in the Bitcoin Blockchain.
.- Machine Learning for Cybersecurity (MLCS 2023).
.- A source separation approach to temporal graph modelling for computer networks.
.- Quantum Machine Learning for Malware Classification.
.- Side-channel Based Intrusion Detection for Network Equipment.
.- I See Dead People: Gray-Box Adversarial Attack on Image-To-Text Models.
.- Concept Drift Detection using Ensemble of Integrally Private Models.
.- MIDAS - The 8th Workshop on MIning DAta for financial applicationS.
.- ViBERTgrid BiLSTM-CRF: Multimodal Key Information Extraction from Unstructured Financial Documents.
.- Comparing Deep RL and Traditional Financial Portfolio Methods - Full paper.
.- Occupational Fraud Detection through Agent-based Data Generation.
.- Stock Price Time Series Forecasting Using Dynamic Graph Neural Networks and Attention Mechanism in Recurrent Neural Networks.
.- Flexible Tails for Normalising Flows, with Application to the Modelling of Financial Return Data.
.- Exploring Alternative Data for Nowcasting: A Case Study on US GDP using Topic Attention.
.- Topology-Agnostic Detection of Temporal Money Laundering Flows in Billion-Scale Transactions.
.- Boosting Credit Risk Data Quality using Machine Learning and eXplainable AI Techniques.
.- Ensemble methods for Stock Market Prediction.
.- Workshop on Advancements in Federated Learning.
.- Federated Learning with Neural Graphical Models.
.- On improving accuracy in Federated Learning using GANs-based pre-training and Ensemble Learning.
.- Re-evaluating the Privacy Benefit of Federated Learning.
.- Parameterizing Federated Continual Learning for Reproducible Research.