2021
DOI: 10.37190/e-inf210108
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Multi-view learning for software defect prediction

Abstract: Background: Traditionally, machine learning algorithms have been simply applied for software defect prediction by considering single-view data, meaning the input data contains a single feature vector. Nevertheless, different software engineering data sources may include multiple and partially independent information, which makes the standard single-view approaches ineffective. Objective: In order to overcome the single-view limitation in the current studies, this article proposes the usage of a multi-view… Show more

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“…It utilizes extensive training datasets comprising chemical compounds, each defined by descriptors such as molecular weight or lipophilicity. Conceptually, compounds are plotted in a multidimensional space, with each dimension representing a descriptor [191,193–195] . Upon introducing a new compound, KNN determines the K nearest neighbors based on their proximity in this space, using a predefined value of K often derived as the square root of the total number of compounds in the dataset.…”
Section: Instance‐based Methodsmentioning
confidence: 99%
“…It utilizes extensive training datasets comprising chemical compounds, each defined by descriptors such as molecular weight or lipophilicity. Conceptually, compounds are plotted in a multidimensional space, with each dimension representing a descriptor [191,193–195] . Upon introducing a new compound, KNN determines the K nearest neighbors based on their proximity in this space, using a predefined value of K often derived as the square root of the total number of compounds in the dataset.…”
Section: Instance‐based Methodsmentioning
confidence: 99%