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ConvDeiT-Tiny: Adding Local Inductive Bias to DeiT-Ti for Enhanced Maize Leaf Disease Classification
Damaris Waema
,Waweru Mwangi
,Petronilla Muriithi
Posted: 02 March 2026
Adaptive Anomaly Detection in Microservice Systems via Meta-Learning
Xiao Yang
,Sijia Li
,Ke Wu
,Zhijun Wang
,Yuqi Tang
,Yueting Li
Posted: 02 March 2026
Machine Learning in Education
Georgios P. Georgiou
Posted: 02 March 2026
NeuroCore: A Framework for Neuromodulation-Regulated Self-Modifying Modular Neural Architectures
Yijiang Li
We introduce the NeuroCore framework, a formal mathematical treatment of modular neural architectures in which a minimal executive Core—possessing no higher cognitive capabilities—autonomously orchestrates a heterogeneous collection of specialist modules through learned continuous-representation interfaces. The Core’s behavior is governed by two neuromodulation-inspired subsystems: a Dopamine System implementing distributional reinforcement learning with prediction-error intrinsic motivation and a stagnation penalty, and a Serotonin System formulated as a meta-reinforcement-learning controller that learns to optimize long-horizon constraint satisfaction. We make four theoretical contributions. First, we formalize the stagnation-modification tradeoff—proving that without explicit anti-stagnation pressure, optimal policies in self-modifying systems converge to modification-avoidance, and deriving the conditions under which the stagnation penalty restores non-trivial self-modification behavior (Theorem 1). Second, we prove a general non-convergence result for coupled self-modifying multi-objective systems, showing that the joint optimization does not admit guaranteed convergence to fixed points or bounded attractors in the parameter space (Theorem 2). Third, we establish partial stability guarantees: bounded representational drift via homeostatic Lyapunov functions (Theorem 3), local convergence under frozen modules via two-timescale stochastic approximation (Proposition 1), and modification frequency bounds (Proposition 2). Fourth, we derive information-theoretic costs for module manipulation operations that serve as principled proxies for true disruption. We propose seven falsifiable empirical predictions and discuss implications for the design of autonomous self-organizing AI systems.
We introduce the NeuroCore framework, a formal mathematical treatment of modular neural architectures in which a minimal executive Core—possessing no higher cognitive capabilities—autonomously orchestrates a heterogeneous collection of specialist modules through learned continuous-representation interfaces. The Core’s behavior is governed by two neuromodulation-inspired subsystems: a Dopamine System implementing distributional reinforcement learning with prediction-error intrinsic motivation and a stagnation penalty, and a Serotonin System formulated as a meta-reinforcement-learning controller that learns to optimize long-horizon constraint satisfaction. We make four theoretical contributions. First, we formalize the stagnation-modification tradeoff—proving that without explicit anti-stagnation pressure, optimal policies in self-modifying systems converge to modification-avoidance, and deriving the conditions under which the stagnation penalty restores non-trivial self-modification behavior (Theorem 1). Second, we prove a general non-convergence result for coupled self-modifying multi-objective systems, showing that the joint optimization does not admit guaranteed convergence to fixed points or bounded attractors in the parameter space (Theorem 2). Third, we establish partial stability guarantees: bounded representational drift via homeostatic Lyapunov functions (Theorem 3), local convergence under frozen modules via two-timescale stochastic approximation (Proposition 1), and modification frequency bounds (Proposition 2). Fourth, we derive information-theoretic costs for module manipulation operations that serve as principled proxies for true disruption. We propose seven falsifiable empirical predictions and discuss implications for the design of autonomous self-organizing AI systems.
Posted: 02 March 2026
Structure-Aware Unified Modeling for Root Cause Localization in Microservice Systems Using Multi-Source Observability Data
Zixiao Huang
,Sijia Li
,Chengda Xu
,Bolin Chen
,Yihan Xue
,Jixiao Yang
Posted: 02 March 2026
Hierarchical Context-Aware Summarization for Complex Korean Administrative Tables via Multi-Stage Prompt Engineering
Zeren Gu
,Jialei Tan
Posted: 02 March 2026
AControlled Comparison of Deep Learning Architectures for Multi-Horizon Financial Forecasting Evidence from 918 Experiments
Nabeel Ahmad Saidd
Posted: 02 March 2026
Stochastic Incompleteness: A Predictability Taxonomy for Clinical AI Deployment
Laxman M. M.
Posted: 28 February 2026
NEXUS: A Multi-Agent Architectural Position Paperfor Autonomous Insurance Transitioning from Human-Default to AI-Native Decision Environments
Azariah Jebin
Posted: 28 February 2026
Enhancing Greenhouse Pollination with CNN-Based Micro-UAV for Real-Time Flower Detection
Mohd Ismail Yusof
,Fatin Nabilah Mohd Yasin
,Ayu Gareta Risangtuni
,Narendra Kurnia Putra
,Siti Hafshar Samseh
,Azavitra Zainal
,Mohd Aliff Afira Sani
Posted: 28 February 2026
Explainable Deep Learning Approaches for Dyslexia Detection in English and Arabic Handwriting Using Convolutional Neural Networks and Transfer Learning
Marwa Abu Najm
,Hamid Mukhtar
Posted: 28 February 2026
Wasserstein Generative Data Modeling for Robust Portfolio Optimization Under Distributional Uncertainty
Sumeng Huang
,Yingyi Shu
,Kan Zhou
,Shihao Sun
,Yingxin Ou
,Ruobing Yan
Posted: 28 February 2026
Intelligent Analysis of Data Flows for Real-Time Classification of Traffic Incidents
Gary Reyes
,Roberto Tolozano-Benites
,Cristhina Ortega
,Christian Albia
,Laura Lanzarini
,Waldo Hasperué
,Dayron Rumbaut
,Julio Barzola-Monteses
Posted: 28 February 2026
Systematic Evaluation Framework for ML and DL-Based Ransomware Detection
Haider Qasim
,Yi Lu
Posted: 28 February 2026
Future of Release Management (Firmware/Software Delivery) in the Era of Generative AI
Dominion Nicholas
,Bhargav Sharma
Posted: 28 February 2026
SkillDiff: Quantifying Fine-Grained Skill Differences from Paired Demonstration Videos
Soo-Jin Park
,Ayaan Verma
,David Whitfield
,Nathan O'Reilly
,Mei-Ling Chen
,Rajesh Bhattacharya
Posted: 28 February 2026
Leakage-Free One-Year-Ahead Prediction of Corporate Tax Avoidance Proxy Measures in Korea
Wonho Song
,Hyungjoon Kim
Posted: 28 February 2026
Cognitive Modeling for Long-Horizon Agent Learning via Integrated Long-Term Memory and Reasoning
Linghao Yang
,Tian Guan
,Yumeng Ma
,Zhongkang Li
,Zhou Fang
,Feiyang Wang
Posted: 28 February 2026
From Automation to Orchestration: A Pedagogically Oriented Course-Based Online Learning Platform
Asya Toskova
,Miroslav Uzunov
,Todorka Glushkova
Posted: 28 February 2026
Stock Forecasting Using Sequential Models and GNN
Othoniel Joseph
,Prathyusha Sukumar
,Rayner Ulloa
,Avimanyou Vatsa
,Alexander Casti
Posted: 28 February 2026
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