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MedSeg-Adapt: Clinical Query-Guided Adaptive Medical Image Segmentation via Generative Data Augmentation and Benchmarking
Gregory Yu,
Aaron Collins,
Ian Butler
Posted: 19 November 2025
Physics of Mindful Knowledge
Rao Mikkilineni,
Max Michaels
Posted: 19 November 2025
Patient Deduplication in Uganda’s Electronic Medical Records System: A comparison of Three Classification Algorithms
Alex Mirugwe,
Arthur G. Fitzmaurice,
Alice Namale,
Evelyn Akello,
Simon Muhumuza,
Milton Kaye,
Samuel Lubwama,
Jonathan Mpango,
Paul Katongole,
Solomon Ssevvume
+4 authors
Posted: 19 November 2025
Hybrid Time-Position Embedding for Provenance-Based Intrusion Detection
Seonghyeon Gong,
Jake Cho,
Kyuwon Ken Choi
Posted: 19 November 2025
MSP-Net: Multi-Scale Spectrum Pyramid Network for Robust Synthetic Aperture Radar Automatic Target Recognition
Aisha Sir Elkhatem,
Seref Naci Engin,
Yerbol Ospanov,
Aizhan Erulanova
Posted: 19 November 2025
The Collatz Conjecture and the Spectral Calculus for Arithmetic Dynamics
James Hateley
Posted: 19 November 2025
A Dual-Attention CNN–GCN–BiLSTM Framework for Intelligent Intrusion Detection in Wireless Sensor Networks
Laith H. Baniata,
Ashraf ALDabbas,
Jaffar M. Atwan,
Hussein Alahmer,
Basil Elmasri,
Chayut Bunterngchit
Posted: 19 November 2025
An AI-Driven Precision Irrigation Framework for Enhanced Water Efficiency in Iraqi Agriculture
Mohammad Khalaf Rahim Al-juaifari
Posted: 19 November 2025
A Survey on Video Generation Technologies, Applications, and Ethical Considerations
Kaiqi Chen
Posted: 19 November 2025
Predictive Model for Analyzing Smartphone Usage and Behavioral Patterns Using Machine Learning
Zaid Khalid,
Noor Ul Amin
Posted: 19 November 2025
Jordan Curves: Ramsey Approach and Topology
Edward Bormashenko
Posted: 19 November 2025
An Industry-Ready Machine Learning Ontology
Bernhard G Humm
Posted: 19 November 2025
A Theoretical Framework for Risk Analysis in Construction Projects Using BIM Data and Machine Learning
Zofia Feliksinska-Swierz,
Anetta Kępczyńska-Walczak,
Artur Wirowski
The objective of this paper is to develop a theoretical framework for the analysis of data exported from a Building Information Modeling (BIM) model through the application of Artificial Intelligence methods, serving as a foundation for risk assessment in construction projects. The purpose of this study is to investigate the potential of data mining techniques that function independently of biases introduced by predefined labelling. In recent years, a growing body of literature has examined the role of BIM technology in risk management. The most prevalent applications primarily rely on 3D visualization, which facilitates the identification and deeper understanding of potential issues related to design coordination and site safety. A significant contribution in this regard comes from built-in software features that enable automated clash detection and rule-based checking. Another dimension frequently associated with BIM in the context of risk management is 4D modeling, which incorporates construction sequencing to help mitigate risks related to buildability, scheduling, and subcontractor coordination. Based on a review of the relevant literature, this paper first presents a list of risk factors that can potentially be analysed using data extracted from BIM models, followed by an outline of a proposed method for further analysis employing machine learning techniques.
The objective of this paper is to develop a theoretical framework for the analysis of data exported from a Building Information Modeling (BIM) model through the application of Artificial Intelligence methods, serving as a foundation for risk assessment in construction projects. The purpose of this study is to investigate the potential of data mining techniques that function independently of biases introduced by predefined labelling. In recent years, a growing body of literature has examined the role of BIM technology in risk management. The most prevalent applications primarily rely on 3D visualization, which facilitates the identification and deeper understanding of potential issues related to design coordination and site safety. A significant contribution in this regard comes from built-in software features that enable automated clash detection and rule-based checking. Another dimension frequently associated with BIM in the context of risk management is 4D modeling, which incorporates construction sequencing to help mitigate risks related to buildability, scheduling, and subcontractor coordination. Based on a review of the relevant literature, this paper first presents a list of risk factors that can potentially be analysed using data extracted from BIM models, followed by an outline of a proposed method for further analysis employing machine learning techniques.
Posted: 19 November 2025
Relation-Sensitive VQA with A Unified Tri-Modal Graph Framework
Jolien Van Bossche,
Thibault Clercq,
Callum Hensley,
Rune Peeters
Posted: 18 November 2025
A Survey of Recent Advances in Adversarial Attack and Defense on Vision-Language Models
Md Iqbal Hossain,
Neeresh Kumar Perla,
Afia Sajeeda,
Siyu Xia,
Ming Shao
Posted: 18 November 2025
Close Form Design Quantiles Under Skewness and Kurtosis: A Hermite Approach to Structural Reliability
Zdeněk Kala
Posted: 18 November 2025
Physics-Based Simulation of Master Template Fabrication: Integrated Modeling of Resist Coating, Electron Beam Lithography, and Reactive Ion Etching
Jean Chien,
Lily Chuang,
Nail Tang,
Eric Lee
Posted: 18 November 2025
Multi-Agent LLM Systems: From Emergent Collaboration to Structured Collective Intelligence
Feng Chen
Posted: 18 November 2025
An Intelligent Decision-Support Framework for AST Risk Prediction Using Explainable Ensemble Learning
Natalya Maxutova,
Akmaral Kassymova,
Kuanysh Kadirkulov,
Aisulu Ismailova,
Gulkiz Zhidekulova,
Zhanar Azhibekova,
Jamalbek Tussupov,
Quvvatali Rakhimov,
Zhanat Kenzhebayeva
Posted: 18 November 2025
Transparency and Explainability Focus: Making AI Decisions Interpretable to Humans
Aiperi Zhenishova
Posted: 18 November 2025
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