Search alternatives:
group classification » risk classification (Expand Search), improve classification (Expand Search), perform classification (Expand Search)
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binary based » library based (Expand Search), linac based (Expand Search), binary mask (Expand Search)
binary base » binary mask (Expand Search), ciliary base (Expand Search), binary image (Expand Search)
based group » case group (Expand Search)
base whale » based whole (Expand Search), baleen whale (Expand Search)
group classification » risk classification (Expand Search), improve classification (Expand Search), perform classification (Expand Search)
whale optimization » swarm optimization (Expand Search)
binary based » library based (Expand Search), linac based (Expand Search), binary mask (Expand Search)
binary base » binary mask (Expand Search), ciliary base (Expand Search), binary image (Expand Search)
based group » case group (Expand Search)
base whale » based whole (Expand Search), baleen whale (Expand Search)
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Data Sheet 1_Bundled assessment to replace on-road test on driving function in stroke patients: a binary classification model via random forest.docx
Published 2025“…A random forest algorithm was then applied to construct a binary classification model based on the data obtained from the two groups.…”
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Data XGBOOST.
Published 2025“…Extreme Gradient Boosting (XGBoost), a machine learning algorithm, was employed for binary classification (low-moderate vs. high physical activity). …”
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Data_Sheet_1_Multiclass Classification Based on Combined Motor Imageries.pdf
Published 2020“…The proposed multilabel approaches convert the original 8-class problem into a set of three binary problems to facilitate the use of the CSP algorithm. …”
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Natural language processing and machine learning algorithm to identify brain MRI reports with acute ischemic stroke
Published 2019“…</p><p>Conclusions</p><p>Supervised ML based NLP algorithms are useful for automatic classification of brain MRI reports for identification of AIS patients. …”
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Data_Sheet_1_Calcium Spark Detection and Event-Based Classification of Single Cardiomyocyte Using Deep Learning.pdf
Published 2021“…Furthermore, we proposed an event-based logistic regression and binary classification model to classify single cardiomyocytes using Ca<sup>2+</sup> spark characteristics, which to date have generally been used only for simple statistical analyses and comparison between normal and diseased groups. …”
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DataSheet_1_Patient-Level Effectiveness Prediction Modeling for Glioblastoma Using Classification Trees.docx
Published 2020“…Secondly, a classification tree algorithm was trained and validated for dividing individual patients into treatment response and non-response groups. …”
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Algoritmo de clasificación de expresiones de odio por tipos en español (Algorithm for classifying hate expressions by type in Spanish)
Published 2024“…</li><li><code>2</code>: Sexual hatred: Expressions directed against individuals or groups based on their sexual orientation.</li><li><code>3</code>: Xenophonic hatred: Expressions directed against individuals or groups based on their origin (e.g., foreigners and immigrants).…”
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Fairness in Machine Learning: A Review for Statisticians
Published 2025“…<p>With the widespread application of machine learning algorithms in daily life, it is crucial to mitigate the risk of these algorithms producing socially undesirable outcomes that may disproportionately disadvantage certain groups or individuals based on demographic characteristics such as gender, race, or disabilities. …”
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Partial dependence plots (A – G) and the resulting clustered feature importance (H) for each feature and trained model.
Published 2025“…In H), we hierarchically clustered (Euclidean distance with average linking) the feature importance resulting from the normalized variance in the partial dependence plots for each trained model. Tree-based algorithms (i.e., Decision Tree, Random Forest, XGBoost, and RUSBoost) are grouped together indicating similar underlying mechanisms for the classification. …”
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Data_Sheet_3_sigFeature: Novel Significant Feature Selection Method for Classification of Gene Expression Data Using Support Vector Machine and t Statistic.docx
Published 2020“…To overcome this limitation of SVM-RFE, we propose a novel feature selection algorithm, termed as “sigFeature” (https://bioconductor.org/packages/sigFeature/), based on SVM and t statistic to discover the differentially significant features along with good performance in classification. …”
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Data_Sheet_2_sigFeature: Novel Significant Feature Selection Method for Classification of Gene Expression Data Using Support Vector Machine and t Statistic.docx
Published 2020“…To overcome this limitation of SVM-RFE, we propose a novel feature selection algorithm, termed as “sigFeature” (https://bioconductor.org/packages/sigFeature/), based on SVM and t statistic to discover the differentially significant features along with good performance in classification. …”
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Data_Sheet_1_sigFeature: Novel Significant Feature Selection Method for Classification of Gene Expression Data Using Support Vector Machine and t Statistic.docx
Published 2020“…To overcome this limitation of SVM-RFE, we propose a novel feature selection algorithm, termed as “sigFeature” (https://bioconductor.org/packages/sigFeature/), based on SVM and t statistic to discover the differentially significant features along with good performance in classification. …”
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