Machine Learning Model
Machine learning models aim to create systems that can learn from data and make predictions or decisions without explicit programming. Current research emphasizes improving model accuracy, interpretability, and robustness, focusing on architectures like deep neural networks, decision tree ensembles, and transformer models, as well as exploring decentralized learning and techniques for mitigating biases and vulnerabilities. These advancements are crucial for diverse applications, ranging from optimizing resource management (e.g., smart irrigation) to improving healthcare diagnostics and enhancing the security and trustworthiness of AI systems.
Papers
A Scenario-Based Functional Testing Approach to Improving DNN Performance
Hong Zhu, Thi Minh Tam Tran, Aduen Benjumea, Andrew Bradley
Identifying Early Help Referrals For Local Authorities With Machine Learning And Bias Analysis
Eufrásio de A. Lima Neto, Jonathan Bailiss, Axel Finke, Jo Miller, Georgina Cosma
Data Augmentation for Mathematical Objects
Tereso del Rio, Matthew England
Machine Learning to detect cyber-attacks and discriminating the types of power system disturbances
Diane Tuyizere, Remy Ihabwikuzo
Steel Surface Roughness Parameter Calculations Using Lasers and Machine Learning Models
Alex Milne, Xianghua Xie
Improving the Efficiency of Human-in-the-Loop Systems: Adding Artificial to Human Experts
Johannes Jakubik, Daniel Weber, Patrick Hemmer, Michael Vössing, Gerhard Satzger
The Effect of Balancing Methods on Model Behavior in Imbalanced Classification Problems
Adrian Stando, Mustafa Cavus, Przemysław Biecek
Redeeming Data Science by Decision Modelling
John Mark Agosta, Robert Horton
Comparing Algorithm Selection Approaches on Black-Box Optimization Problems
Ana Kostovska, Anja Jankovic, Diederick Vermetten, Sašo Džeroski, Tome Eftimov, Carola Doerr
Augmenting Holistic Review in University Admission using Natural Language Processing for Essays and Recommendation Letters
Jinsook Lee, Bradon Thymes, Joyce Zhou, Thorsten Joachims, Rene F. Kizilcec
Probing the Transition to Dataset-Level Privacy in ML Models Using an Output-Specific and Data-Resolved Privacy Profile
Tyler LeBlond, Joseph Munoz, Fred Lu, Maya Fuchs, Elliott Zaresky-Williams, Edward Raff, Brian Testa
Generating Elementary Integrable Expressions
Rashid Barket, Matthew England, Jürgen Gerhard