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Semi-Automated Offside Technology in Professional Football: A Critical Case Study on the Necessity of Explainable and Deterministic Artificial Intelligence in High-Stakes Decision Systems
Jesús Manuel Soledad Terrazas
Posted: 16 December 2025
On the Establishment of the Riemann Hypothesis: A Spectral Framework Through Analytical Derivation
Felipe Oliveira Souto
Posted: 16 December 2025
A Non-Turing Computer Architecture for Artificial Intelligence with Dynamic Rule Learning and Generalization Abilities and Its Halting Problem
Jineng Ren
Posted: 16 December 2025
DACCA: Distributed Adaptive Cloud Continuum Architecture
Nektarios Deligiannakis
,Vassilis Papataxiarhis
,Michalis Loukeris
,Stathes Hadjiefthymiades
,Marios Touloupou
,Syed Mafooq Ul Hassan
,Herodotos Herodotou
,Athanasios Moustakas
,Emmanouil Bampis
,Konstantinos Ioannidis
+8 authors
Posted: 16 December 2025
SORT-AI: A Structural Safety and Reliability Framework for Advanced AI Systems with Retrieval-Augmented Generation as a Diagnostic Testbed
Gregor Wegener
Posted: 16 December 2025
Multimodal Machine Learning in Healthcare: A Tutorial and Review
Muntaqim Ahmed Raju
,Priyanka Siddappa
,Md Shifat Haider Al Amin
,Ruizhe Ma
Posted: 16 December 2025
Effects of Computer Science on the Creative Industries: A Bibliometric Analysis
Lorenzo Alejandro Matadamas-Torres
,Juan Regino Maldonado
,Idarh Matadamas
,Luis Alberto Alonso-Hernandez
,Manuel de Jesus Melo-Monterrey
,Lorena Juith Ramírez-López
,Luis Enrique Rodríguez-Antonio
Posted: 16 December 2025
Hybrid-Frequency-Aware Mixture-of-Experts Method for CT Metal Artifact Reduction
Pengju Liu
,Hongzhi Zhang
,Chuanhao Zhang
,Feng Jiang
Posted: 16 December 2025
SHAP-Based Feature Selection and Iterative Hyperparameter Tuning for Customer Churn Prediction in Telecommunication Datasets
Bijaya Pariyar
Posted: 16 December 2025
Dynamic Spatiotemporal Causal Graph Neural Networks for Corporate Revenue Forecasting
Qingmiao Gan
,Rodrigo Ying
,Di Li
,Yuliang Wang
,Qianxi Liu
,Jingjing Li
Posted: 16 December 2025
Orchestrating Player Affect: A Closed-Loop Transformer Architecture for Targeted Emotional Induction in Mobile Games
Jakub Kowalik
,Paweł Kapusta
Posted: 16 December 2025
Feature Engineering in the Transformer Era: A Controlled Study on Toxic Comment Classification
Zhanyi Ding
,Zijing Wei
,Chao Yang
,Hailiang Wang
,Shuo Xu
,Yixiang Li
,Xuanjie Chen
Posted: 16 December 2025
Deep Learning Framework for Change-Point Detection in Cloud-Native Kubernetes Node Metrics Using Transformer Architecture
Cancan Hua
,Ning Lyu
,Chen Wang
,Tingzhou Yuan
This study proposes a Transformer-based change-point detection method for modeling and anomaly detection of multidimensional time-series metrics in Kubernetes nodes. The research first analyzes the complexity and dynamics of node operating states in cloud-native environments and points out the limitations of traditional single-threshold or statistical methods when dealing with high-dimensional and non-stationary data. To address this, an input representation mechanism combining linear embedding and positional encoding is designed to preserve both multidimensional metric features and temporal order information. In the modeling stage, a multi-head self-attention mechanism is introduced to effectively capture global dependencies and cross-dimensional interactions. This enhances the model's sensitivity to complex patterns and potential change points. In the output stage, a differentiated scoring function and a normalized smoothing method are applied to evaluate the time series step by step. A change-point decision function based on intensity scores is then constructed, which significantly improves the ability to identify abnormal state transitions. Through validation on large-scale distributed system metric data, the proposed method outperforms existing approaches in AUC, ACC, F1-Score, and Recall. It demonstrates higher accuracy, robustness, and stability. Overall, the framework not only extends attention-based time-series modeling at the theoretical level but also provides strong support for intelligent monitoring and resource optimization in cloud-native environments at the practical level.
This study proposes a Transformer-based change-point detection method for modeling and anomaly detection of multidimensional time-series metrics in Kubernetes nodes. The research first analyzes the complexity and dynamics of node operating states in cloud-native environments and points out the limitations of traditional single-threshold or statistical methods when dealing with high-dimensional and non-stationary data. To address this, an input representation mechanism combining linear embedding and positional encoding is designed to preserve both multidimensional metric features and temporal order information. In the modeling stage, a multi-head self-attention mechanism is introduced to effectively capture global dependencies and cross-dimensional interactions. This enhances the model's sensitivity to complex patterns and potential change points. In the output stage, a differentiated scoring function and a normalized smoothing method are applied to evaluate the time series step by step. A change-point decision function based on intensity scores is then constructed, which significantly improves the ability to identify abnormal state transitions. Through validation on large-scale distributed system metric data, the proposed method outperforms existing approaches in AUC, ACC, F1-Score, and Recall. It demonstrates higher accuracy, robustness, and stability. Overall, the framework not only extends attention-based time-series modeling at the theoretical level but also provides strong support for intelligent monitoring and resource optimization in cloud-native environments at the practical level.
Posted: 16 December 2025
House of Mirrors: Monotone Nonlinear Transformations for Modeling and Quantifying Perceptual Distortion in Data-Driven and Psychometric Systems
Indika Dewage
,Austin Webber
Posted: 16 December 2025
Comparative Analysis of YOLOv8 and YOLOv11 Models for Phenotypic Traits of Edible Mushrooms
Doo-Ho Choi
,Youn-Lee Oh
,Minji Oh
,Eun-Ji Lee
,Sung-I Woo
,Minseek Kim
,Ji-Hoon Im
Posted: 16 December 2025
Reinterpreting Erdős’ Conjecture Through Informational Divergence and Coherence Collapse
Raoul Bianchetti
Posted: 16 December 2025
What Is the Radius of Convergence in the Sequence Space Seq(R) ?
Mohsen Soltanifar
Posted: 16 December 2025
One Class of H∞ Cheap Control Problems: Asymptotic Solution
Valery Y. Glizer
,Vladimir Turetsky
Posted: 16 December 2025
A Robust Skeletonization Method for High-Density Fringe Patterns in Holographic Interferometry Based on Parametric Modeling and Strip Integration
Sergey Lychev
,Alexander Digilov
Posted: 16 December 2025
Moments of Real, Respectively of Complex Valued Functions, with Applications
Cristian Octav Olteanu
Posted: 16 December 2025
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