
Tag: machine learning
Machine Learning (ML) deals with how computer programs can learn and improve at performing a specific task when trained on historical data. ML is divided into unsupervised learning (such as clustering and topic modeling) and supervised learning (training a system on annotated examples). ML has been a central part of my research since my PhD studies, and even ended up in my thesis title.


Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry

Adaptive Runtime Response Time Control in PLC-based Real-Time Systems using Reinforcement Learning

Learning-based Response Time Analysis in Real-Time Embedded Systems: A Simulation-based Approach

Automotive Safety and Machine Learning: Initial Results from a Study on How to Adapt the ISO 26262 Safety Standard

Learning-Based Self-Adaptive Assurance of Timing Properties in a Real-Time Embedded System

On Using Active Learning and Self-Training when Mining Performance Discussions on Stack Overflow

Using Text Clustering to Predict Defect Resolution Time: A Conceptual Replication and an Evaluation of Prediction Accuracy

TuneR: A Framework for Tuning Software Engineering Tools with Hands-on Instructions in R
