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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
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
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
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
Study on Real Estate Search Model Using RAG Applied Property Graph Index
Akira Otsuki
This study is preliminary methodological studies. RAG (Retrieval Augmented Generation) is a text-generative AI model that combines search-based and text-generative-based AI models. Because original data can be used as external search data for RAG, it is not affected by incorrect data from the internet introduced by fine-tuning. Furthermore, it is possible to construct an original generative AI model that has expert knowledge. Although the LlamaIndex library currently exists for implementing RAG, text vectorization is performed using an approach similar to doc2Vec, creating issues that affect the accuracy of the generative AI’s answers. Therefore, in this study, we propose a Property Graph RAG that can define meaning when indexing text by applying the Property Graph Index to LlamaIndex. Evaluation experiments were conducted using 10 real estate datasets and various cases including sales prices, On Foot Time to Nearest Station (min), and Exclusive Floor Area (m²), and the results confirmed that the proposed generative AI model offers more accurate answers than Prompt Refinement and Text_To_SQL for property search indexing.
This study is preliminary methodological studies. RAG (Retrieval Augmented Generation) is a text-generative AI model that combines search-based and text-generative-based AI models. Because original data can be used as external search data for RAG, it is not affected by incorrect data from the internet introduced by fine-tuning. Furthermore, it is possible to construct an original generative AI model that has expert knowledge. Although the LlamaIndex library currently exists for implementing RAG, text vectorization is performed using an approach similar to doc2Vec, creating issues that affect the accuracy of the generative AI’s answers. Therefore, in this study, we propose a Property Graph RAG that can define meaning when indexing text by applying the Property Graph Index to LlamaIndex. Evaluation experiments were conducted using 10 real estate datasets and various cases including sales prices, On Foot Time to Nearest Station (min), and Exclusive Floor Area (m²), and the results confirmed that the proposed generative AI model offers more accurate answers than Prompt Refinement and Text_To_SQL for property search indexing.
Posted: 16 December 2025
SORT-AI: A Projection-Based Structural Framework for AI Safety Alignment Stability, Drift Detection, and Scalable Oversight
Gregor Herbert Wegener
Posted: 15 December 2025
On the Complementarity of Classical Convolution and Quantum Neural Networks in Image Classification
Silvie Illésová
,Emmanuel Obeng
,Tomáš Bezděk
,Vojtěch Novák
,Martin Beseda
Posted: 15 December 2025
Exploring the Collaboration Between Vision Models and LLMs for Enhanced Image Classification
Bhavya Rupani
,Dmitry Ignatov
,Radu Timofte
Posted: 15 December 2025
Intelligent Surveillance Engine (ISE): An AI-Driven Digital Sovereignty Framework for Financial Crime Detection
Muhammad Nuraddeen Ado
,Shafi’i Muhammad Abdulhamid
,Idris Ismaila
Posted: 15 December 2025
Intelligence Without Consciousness the Rise of the IIT Zombies
Zulqarnain Ali
Posted: 15 December 2025
A Visual Target Navigation Method for Quadcopter Based on Large Language Model in Unknown Environment
Yunzhuo Liu
,Zhaowei Ma
,Jiankun Guo
,Haozhe Sun
,Yifeng Niu
,Hong Zhang
,Mengyun Wang
Posted: 14 December 2025
Quantum-Resilient Access Control Protocols for Cloud-Native Infrastructures in Post-Quantum Security Contexts
Vinesh Aluri
Posted: 14 December 2025
NP-Hardness Collapsed: Deterministic Resolution of Spin-Glass Ground States via Information-Geometric Manifolds (Scaling from N=8 to N=100)
Stefan Trauth
Posted: 12 December 2025
AI-Based Prediction of Numerical Earthquakes Using (Pseudo) Acoustic Emission
Piotr Klejment
Posted: 12 December 2025
Information is All It Needs: A First-Principles Foundation for Physics, Cognition, and Reality
Stefan Trauth
Posted: 12 December 2025
Smart E-Waste Recycling Using AI and Blockchain: Enabling Sustainable Resource Recovery for Sustainable Power Solutions
Al Imran
,Md. Koushik Ahmed
,Mahin Mahmud
,Junaid Rahman Mokit
,Redwan Utsab
,Md. Motaharul Islam
Posted: 12 December 2025
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