Atjaunināt sīkdatņu piekrišanu

E-grāmata: PRICAI 2024: Trends in Artificial Intelligence: 21st Pacific Rim International Conference on Artificial Intelligence, PRICAI 2024, Kyoto, Japan, November 18-24, 2024, Proceedings, Part I

Edited by , Edited by , Edited by , Edited by , Edited by
  • Formāts - EPUB+DRM
  • Cena: 77,31 €*
  • * ši ir gala cena, t.i., netiek piemērotas nekādas papildus atlaides
  • Ielikt grozā
  • Pievienot vēlmju sarakstam
  • Šī e-grāmata paredzēta tikai personīgai lietošanai. E-grāmatas nav iespējams atgriezt un nauda par iegādātajām e-grāmatām netiek atmaksāta.

DRM restrictions

  • Kopēšana (kopēt/ievietot):

    nav atļauts

  • Drukāšana:

    nav atļauts

  • Lietošana:

    Digitālo tiesību pārvaldība (Digital Rights Management (DRM))
    Izdevējs ir piegādājis šo grāmatu šifrētā veidā, kas nozīmē, ka jums ir jāinstalē bezmaksas programmatūra, lai to atbloķētu un lasītu. Lai lasītu šo e-grāmatu, jums ir jāizveido Adobe ID. Vairāk informācijas šeit. E-grāmatu var lasīt un lejupielādēt līdz 6 ierīcēm (vienam lietotājam ar vienu un to pašu Adobe ID).

    Nepieciešamā programmatūra
    Lai lasītu šo e-grāmatu mobilajā ierīcē (tālrunī vai planšetdatorā), jums būs jāinstalē šī bezmaksas lietotne: PocketBook Reader (iOS / Android)

    Lai lejupielādētu un lasītu šo e-grāmatu datorā vai Mac datorā, jums ir nepieciešamid Adobe Digital Editions (šī ir bezmaksas lietotne, kas īpaši izstrādāta e-grāmatām. Tā nav tas pats, kas Adobe Reader, kas, iespējams, jau ir jūsu datorā.)

    Jūs nevarat lasīt šo e-grāmatu, izmantojot Amazon Kindle.

The five-volume proceedings set LNAI 15281-15285, constitutes the refereed proceedings of the 21st Pacific Rim International Conference on Artificial Intelligence, PRICAI 2024, held in Kyoto, Japan, in November 1824, 2024.





The 145 full papers and 35 short papers included in this book were carefully reviewed and selected from 543 submissions. 





The papers are organized in the following topical sections:





Part I: Machine Learning, Deep Learning





Part II: Deep Learning, Federated Learning, Generative AI, Natural Language Processing, Large Language Models, 





Part III: Large Language Models, Computer Vision





Part IV: Computer Vision, Autonomous Driving, Agents and Multiagent Systems, Knowledge Graphs, Speech Processing, Optimization





Part V: Optimization, General Applications, Medical Applications, Theoretical Foundations of AI

.- Machine Learning.
.- Quantitative Analysis of Training Methods, Data Size, and User-Specific Effectiveness in DL-Based Personalized Aesthetic Evaluation.
.- EQUISCALE: Equitable Scaling for Abstention Learning.
.- Unsupervised Clustering Using a Variational Autoencoder with Constrained Mixtures for Posterior and Prior.
.- UTBoost: Gradient Boosted Decision Trees for Uplift Modeling.
.- CodeMosaic Patch: Physical Adversarial Attacks Against Infrared Aerial Object Detectors.
.- Sequential Clustering for Real-world Datasets.
.- Dual-mode Contrastive Learning-Enhanced Knowledge Tracing.
.- Leveraging Information Consistency in Frequency and Spatial Domain for Adversarial Attacks.
.- Characterization of Similarity Metrics in Epistemic Logic.
.- A Relaxed Symmetric Non-negative Matrix Factorization Approach for Community Discovery.
.- Enhanced Cognitive Distortions Detection and Classification through Data Augmentation Techniques.
.- Enhancing Music Genre Classification using Augmented Features Ensemble Learning Technique.
.- A Multi-Layer Network Community Detection Method via Network Feature Augmentation and Contrastive Learning.
.- Scene Text Recognition Based on Corner Point and Attention Mechanism.
.- A Comprehensive Framework for Debiased Sample Selection across All Noise Types.
.- A Traffic Flow Prediction Model Integrating Dynamic Implicit Graph Information.
.- A Recursive Learning Algorithm for the Least Squares SVM.
.- BDEL: A Backdoor Attack Defense Method Based on Ensemble Learning.
.- Customizing Spatial-Temporal Graph Mamba Networks for Pandemic Forecasting.
.- Distribution-aligned Sequential Counterfactual Explanation with Local Outlier Factor.
.- T-FIA: Temporal-Frequency Interactive Attention Network for Long-term Time Series Forecasting.
.- Multi-modal Food Recommendation using Clustering andSelf-supervised Learning.
.- A quality assessment method of few-shot datasets based on the fusion of quantity and quality.
.- Deep Learning.
.- CSDCNet: A Semantic Segmentation Network for Tubular Structures.
.- Neural Network Surrogate based on Binary Classification for Assisting Genetic Programming in Searching Scheduling Heuristic.
.- HN-Darts:Hybrid Network Differentiable Architecture Search for Industrial Scenarios.
High-Order Structure Enhanced Graph Clustering.
.- CAFGO: Confidence-Adaptive Factor Graph Optimization Algorithm for Fusion Localization.
.- MFNAS: Multi-Fidelity Exploration in Neural Architecture Search with Stable Zero-shot Proxy.
.- DyAGL: A Dynamic-aware Adaptive Graph Learning Network for Next POI Recommendation.
.- Acoustic classification of bird species using improved pre-trained models.
.- Aspect Term Extraction via Dynamic Attention and a Densely Connected Graph Convolutional Network.
.- NLDF: Neural Light Dynamic Fields for 3D Talking Head Generation.
.- Enhanced Knowledge Tracing via Frequency Integration and Order Sensitivity.
.- Position-Aware Dynamic Graph Convolutional Recurrent Network for Traffic Forecasting.
.- Pose Preserving Landmark Guided Neural Radiation Fields for Talking Portrait Synthesis.
.- Adaptive Optimisation of PyTorch Memory Pools for DNNs.
.- Detaching Range from Depth: Personalized Recommendation Meets Personalized PageRank.
.- Context-Aware Structural Adaptive Graph Neural Networks.
.- multi-GAT: Integrative Analysis of scRNA-seq and scATAC-seq Data Using Graph Attention Networks for Cell Annotation.