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Machine learning for software engineering: A tertiary study
Machine learning (ML) techniques increase the effectiveness of software engineering (SE)
lifecycle activities. We systematically collected, quality-assessed, summarized, and …
lifecycle activities. We systematically collected, quality-assessed, summarized, and …
Aspects of quality in Internet of Things (IoT) solutions: A systematic map** study
Internet of Things (IoT) is an emerging technology that has the promising power to change
our future. Due to the market pressure, IoT systems may be released without sufficient …
our future. Due to the market pressure, IoT systems may be released without sufficient …
Identification of systematic errors of image classifiers on rare subgroups
JH Metzen, R Hutmacher, NG Hua… - Proceedings of the …, 2023 - openaccess.thecvf.com
Despite excellent average-case performance of many image classifiers, their performance
can substantially deteriorate on semantically coherent subgroups of the data that were …
can substantially deteriorate on semantically coherent subgroups of the data that were …
A survey on adaptive random testing
Random testing (RT) is a well-studied testing method that has been widely applied to the
testing of many applications, including embedded software systems, SQL database systems …
testing of many applications, including embedded software systems, SQL database systems …
A classification of product sampling for software product lines
The analysis of software product lines is challenging due to the potentially large number of
products, which grow exponentially in terms of the number of features. Product sampling is a …
products, which grow exponentially in terms of the number of features. Product sampling is a …
Product sampling for product lines: the scalability challenge
Quality assurance for product lines is often infeasible for each product separately. Instead,
only a subset of all products (ie, a sample) is considered during testing such that at least the …
only a subset of all products (ie, a sample) is considered during testing such that at least the …
Software module clustering: An in-depth literature analysis
Software module clustering is an unsupervised learning method used to cluster software
entities (eg, classes, modules, or files) with similar features. The obtained clusters may be …
entities (eg, classes, modules, or files) with similar features. The obtained clusters may be …
Leveraging combinatorial testing for safety-critical computer vision datasets
C Gladisch, C Heinzemann… - Proceedings of the …, 2020 - openaccess.thecvf.com
Deep learning-based approaches have gained popularity for environment perception tasks
such as semantic segmentation and object detection from images. However, the different …
such as semantic segmentation and object detection from images. However, the different …
Applications of# SAT solvers on feature models
Product lines are ubiquitous for managing variable systems. The variability of a product line
is typically described in terms of a feature model. Analyzing a feature model gives insight …
is typically described in terms of a feature model. Analyzing a feature model gives insight …
On code analysis opportunities and challenges for enterprise systems and microservices
Code analysis brings excellent benefits to software development, maintenance, and quality
assurance. Various tools can uncover code defects or even software bugs in a range of …
assurance. Various tools can uncover code defects or even software bugs in a range of …