Search alternatives:
modeling algorithm » making algorithm (Expand Search)
complement based » complement past (Expand Search), complement cascade (Expand Search), complement system (Expand Search)
neural modeling » neural modelling (Expand Search), neural coding (Expand Search), causal modeling (Expand Search)
task algorithm » rast algorithm (Expand Search), pass algorithm (Expand Search), lasso algorithm (Expand Search)
second task » second stage (Expand Search), second phase (Expand Search)
modeling algorithm » making algorithm (Expand Search)
complement based » complement past (Expand Search), complement cascade (Expand Search), complement system (Expand Search)
neural modeling » neural modelling (Expand Search), neural coding (Expand Search), causal modeling (Expand Search)
task algorithm » rast algorithm (Expand Search), pass algorithm (Expand Search), lasso algorithm (Expand Search)
second task » second stage (Expand Search), second phase (Expand Search)
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NAR dynamic neural network model.
Published 2025“…Therefore, this article uses the random forest model and XGBoost algorithm to identify core price indicators, and uses an innovative rolling NAR dynamic neural network model to simulate and predict second-hand sailboat price data. …”
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Supervised Predictive Modeling of High-dimensional Data with Group l0-norm Constrained Neural Networks
Published 2025“…By leveraging group <math><mrow><msub><mrow><mi>l</mi></mrow><mn>0</mn></msub></mrow></math>-norm constrained neural networks, the proposed approach aims to simultaneously extract crucial features and estimate the underlying model function with statistically guaranteed accuracy. …”
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Licking behaviors and neural firings of the model.
Published 2025Subjects: “…supervised learning algorithms…”
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Flowchart of GA-PSO-BP neural network model.
Published 2025“…To address this issue, the research employs a genetic-particle swarm optimization (GA-PSO) algorithm and develops a GA-PSO-BP neural network model through the integration of the BP neural network. …”
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RF Algorithm error rate of the model.
Published 2025“…For this purpose, Artificial Neural Networks (ANN), Automatic Linear Model (ALM), Random Forest (RF) Algorithm and Multivariate Adaptive Regression Spline (MARS) Algorithm were used, and the prediction performances of these methods were compared. …”
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Model surface plots in MARS algorithm.
Published 2025“…For this purpose, Artificial Neural Networks (ANN), Automatic Linear Model (ALM), Random Forest (RF) Algorithm and Multivariate Adaptive Regression Spline (MARS) Algorithm were used, and the prediction performances of these methods were compared. …”
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Architectural comparison of the different models.
Published 2025“…Comparisons with a CSP and NN framework confirmed DLRCSPNN’s algorithms superior performance. These results demonstrate the effectiveness of the approach, offering a new perspective on the identification of MI task performance in EEG based BCI technology. …”
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