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Analysis of Artificial Intelligence in the Post-Pandemic Era
Felipe Valentim
Posted: 28 January 2026
Topological Collapse: Persistent Localization of Cryptographic Preimages in Deep Neural Manifolds
Stefan Trauth
Posted: 28 January 2026
Soft Optical Sensor for Embryo Quality Evaluation Based on Multi-Focal Image Fusion and RAG-Enhanced Vision Transformers
Domas Jonaitis
,Vidas Raudonis
,Egle Drejeriene
,Agnė Kozlovskaja-Gumbrienė
,Andres Salumets
Posted: 28 January 2026
Geometric Residual Projection in Linear Regression: Rank-Aware Operators and a Geometric Multicollinearity Index
Mais Haider Alkhateeb
,Samir Brahim Belhaouari
Posted: 28 January 2026
Computational Dysfunction: Diagnosing Emergent Psychopathologies in Advanced Language Models for Aligned Systems
Himanshu Arora
Posted: 28 January 2026
The Minimal Complete Architecture of Agents: Unifying Biological Intelligence, AI, and Physical Observers
Feng Liu
,Ying Liu
,BenFu Lv
Posted: 28 January 2026
Taxonomic Identification of Cognitive Architectures: An Ontological Framework for Synthetic and Hybrid Cognition
Michelle Vivian O’Rourke
Posted: 28 January 2026
Deep Learning Methods for Breast Cancer Classification and Segmentation Using MRI Scans: A Review
Qais AL-Azzam
,Wamadeva Balachandran
,Ziad Hunaiti
Worldwide, breast cancer affected women increasingly with its incidence influenced by a complex interplay of genetic, environmental, and lifestyle factors, resulting in mortalities and ruined lives after getting affected by this malicious disease especially in younger ages. At that point, researchers have developed tools to treat this disease and continued to enhance their tools to reduce the number of mortalities using imaging tools like mammography, x-rays, magnetic resonance imaging and more. They indicated that when it is earlier diagnosing breast cancer it is easier to handle way too better in a try to achieve their goal improving survival rates. This review provides to focus on recent peer-reviewed research within the last decade that used deep learning methods like convolutional neural networks for breast cancer prediction/classification or segmentation using magnetic resonance imaging scans, that’s due its ability to locate lesions/malignancies that usually escapes traditional imaging tools. By evaluating models’ architectures, datasets, preprocessing for each study, key findings of them revealed that using such deep learning techniques have demonstrated truly promising results achieving high performance metrics for breast cancer assessment. While several limitations still exist like data availability, data quality, and data generalizability. Having that in hands, this review assured the importance of keeping developing robust, interpretable and clinically applicable AI models using MRIs to aid radiologists eliminate tedious tasks and support them with decision-making process.
Worldwide, breast cancer affected women increasingly with its incidence influenced by a complex interplay of genetic, environmental, and lifestyle factors, resulting in mortalities and ruined lives after getting affected by this malicious disease especially in younger ages. At that point, researchers have developed tools to treat this disease and continued to enhance their tools to reduce the number of mortalities using imaging tools like mammography, x-rays, magnetic resonance imaging and more. They indicated that when it is earlier diagnosing breast cancer it is easier to handle way too better in a try to achieve their goal improving survival rates. This review provides to focus on recent peer-reviewed research within the last decade that used deep learning methods like convolutional neural networks for breast cancer prediction/classification or segmentation using magnetic resonance imaging scans, that’s due its ability to locate lesions/malignancies that usually escapes traditional imaging tools. By evaluating models’ architectures, datasets, preprocessing for each study, key findings of them revealed that using such deep learning techniques have demonstrated truly promising results achieving high performance metrics for breast cancer assessment. While several limitations still exist like data availability, data quality, and data generalizability. Having that in hands, this review assured the importance of keeping developing robust, interpretable and clinically applicable AI models using MRIs to aid radiologists eliminate tedious tasks and support them with decision-making process.
Posted: 27 January 2026
Knowledge and Context Compression via Question Generation
Alex Anvi Eponon
,Moein Shahiki-Tash
,Abdullah -
,Luis Ramos
,Christian Maldonado-Sifuentes
,Ildar Batyrshin
Posted: 27 January 2026
A Stochastic Process Optimization Framework for Reshoring Supply Chains: Integrating Digital Twins with Mixed-Integer Programming
Manikandan Chandran
,Vimal Shanmuganathan
Posted: 27 January 2026
Integrating Artificial Intelligence in Audit Workflow: Opportunities, Architecture, and Challenges: A Systematic Review
Ashif Anwar
,Muhammad Osama Akeel
Posted: 27 January 2026
Evaluating the Effectiveness of Explainable AI for Adversarial Attack Detection in Traffic Sign Recognition Systems
Bill Deng Pan
,Yupeng Yang
,Richard Guo
,Yongxin Liu
,Hongyun Chen
,Dahai Liu
Posted: 27 January 2026
A Dynamic Model for Adjusting Online Ratings Based on Consumer Distrust Perception
José Ignacio Peláez
,Gustavo F. Vaccaro
,Felix Infante
,David Santo
Posted: 27 January 2026
Cosmic Chronicles – Unveiling Patterns in Space Exploration
Dharshini M
Posted: 27 January 2026
Autonomous Learning Through Self-Driven Exploration and Knowledge Structuring for Open-World Intelligent Agents
Feiyang Wang
,Yumeng Ma
,Tian Guan
,Yutong Wang
,Jinyu Chen
Posted: 27 January 2026
A Diffusion Weighted Ensemble Framework for Robust Short-Horizon Global SST Forecasting from Multivariate GODAS Data
Gwangun Yu
,Gilhan Choi
,Moonseung Choi
,Sun-hong Min
,Yonggang Kim
Posted: 27 January 2026
Hybrid CNN–GA Framework for Optimal Oil Well Placement Under Geological Uncertainty
Wellington Nascimento
,Karla Figueiredo
,Marco Pacheco
,Marco Dias
Posted: 26 January 2026
Phase Cancellation Networks: A Physics-Informed AI Architecture for Hallucination-Free De Novo Drug Design
Woon-Ki Cheon
Posted: 26 January 2026
A Comparative Study on Deep Learning Models for Time-Series Forecasting
Kanishka W. Palihakkara
,Mahesh N. Jayakody
Posted: 26 January 2026
GISMOL: A General Intelligent Systems Modelling Language
Harris Wang
This paper presents GISMOL (General Intelligent System Modelling Language), a Python-based framework implementing Constrained Object Hierarchies (COH)—a neuroscience-inspired theoretical framework for Artificial General Intelligence (AGI). COH and GISMOL together provide a unified language for modelling and implementing intelligent systems across diverse domains including healthcare, manufacturing, finance, and governance. The framework bridges symbolic AI and neural computation through its core architecture of constraint-aware objects with embedded neural components, hierarchical reasoning capabilities, and natural language integration. We demonstrate how GISMOL translates COH’s formal 9-tuple representation into executable systems with six comprehensive case studies, showing its versatility in modelling complex intelligent behaviors while maintaining theoretical rigor. The implementation includes specialized modules for neural integration, multi-domain reasoning, and natural language processing, all built around the COHObject abstraction that encapsulates intelligence as constrained hierarchical structures.
This paper presents GISMOL (General Intelligent System Modelling Language), a Python-based framework implementing Constrained Object Hierarchies (COH)—a neuroscience-inspired theoretical framework for Artificial General Intelligence (AGI). COH and GISMOL together provide a unified language for modelling and implementing intelligent systems across diverse domains including healthcare, manufacturing, finance, and governance. The framework bridges symbolic AI and neural computation through its core architecture of constraint-aware objects with embedded neural components, hierarchical reasoning capabilities, and natural language integration. We demonstrate how GISMOL translates COH’s formal 9-tuple representation into executable systems with six comprehensive case studies, showing its versatility in modelling complex intelligent behaviors while maintaining theoretical rigor. The implementation includes specialized modules for neural integration, multi-domain reasoning, and natural language processing, all built around the COHObject abstraction that encapsulates intelligence as constrained hierarchical structures.
Posted: 26 January 2026
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