Review





Similar Products

90
Minitab Inc multivariate statistical function (principal component analysis and cluster observation using minitab)
Multivariate Statistical Function (Principal Component Analysis And Cluster Observation Using Minitab), supplied by Minitab Inc, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/multivariate statistical function (principal component analysis and cluster observation using minitab)/product/Minitab Inc
Average 90 stars, based on 1 article reviews
multivariate statistical function (principal component analysis and cluster observation using minitab) - by Bioz Stars, 2026-05
90/100 stars
  Buy from Supplier

99
STATA Corporation descriptive statistical component
Descriptive Statistical Component, supplied by STATA Corporation, used in various techniques. Bioz Stars score: 99/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/descriptive statistical component/product/STATA Corporation
Average 99 stars, based on 1 article reviews
descriptive statistical component - by Bioz Stars, 2026-05
99/100 stars
  Buy from Supplier

90
S2 Statistical Solutions statistical parameters of principal component analysis (pca)
Statistical Parameters Of Principal Component Analysis (Pca), supplied by S2 Statistical Solutions, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/statistical parameters of principal component analysis (pca)/product/S2 Statistical Solutions
Average 90 stars, based on 1 article reviews
statistical parameters of principal component analysis (pca) - by Bioz Stars, 2026-05
90/100 stars
  Buy from Supplier

96
MathWorks Inc f x component
F X Component, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 96/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/f x component/product/MathWorks Inc
Average 96 stars, based on 1 article reviews
f x component - by Bioz Stars, 2026-05
96/100 stars
  Buy from Supplier

90
SAS institute proc mixed component of the sas statistical software
Proc Mixed Component Of The Sas Statistical Software, supplied by SAS institute, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/proc mixed component of the sas statistical software/product/SAS institute
Average 90 stars, based on 1 article reviews
proc mixed component of the sas statistical software - by Bioz Stars, 2026-05
90/100 stars
  Buy from Supplier

96
MathWorks Inc components analysis algorithm
FIGURE 4 The top-3 independent <t>components</t> of the spiking response of each trial type. (A) shows each stimulation type and the corresponding independent components over the trial time. Positive coefficients are correlated with spiking activity while negative coefficients are anti-correlated with spiking activity. In the scatter plots below, each component is shown as an axis and each trial is plotted as a point within the three dimensions. Exemplar trials are highlighted and shown in insets with spike rate over time. (B) shows how the component weights (boxes) scale the component shapes to describe the features of the mean firing rate of an example channel. The corresponding blue and green arrows point to the deviations in mean firing rate while the purple arrow and line generally indicate the background firing rate that are captured by the respective component and its weight. (C) shows the reconstruction (shaded yellow) of the mean spike rate of an example channel (black line) using the descriptive weightings of the independent components.
Components Analysis Algorithm, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 96/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/components analysis algorithm/product/MathWorks Inc
Average 96 stars, based on 1 article reviews
components analysis algorithm - by Bioz Stars, 2026-05
96/100 stars
  Buy from Supplier

90
Alpha MOS multivariate statistics principal component analysis (pca)
FIGURE 4 The top-3 independent <t>components</t> of the spiking response of each trial type. (A) shows each stimulation type and the corresponding independent components over the trial time. Positive coefficients are correlated with spiking activity while negative coefficients are anti-correlated with spiking activity. In the scatter plots below, each component is shown as an axis and each trial is plotted as a point within the three dimensions. Exemplar trials are highlighted and shown in insets with spike rate over time. (B) shows how the component weights (boxes) scale the component shapes to describe the features of the mean firing rate of an example channel. The corresponding blue and green arrows point to the deviations in mean firing rate while the purple arrow and line generally indicate the background firing rate that are captured by the respective component and its weight. (C) shows the reconstruction (shaded yellow) of the mean spike rate of an example channel (black line) using the descriptive weightings of the independent components.
Multivariate Statistics Principal Component Analysis (Pca), supplied by Alpha MOS, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/multivariate statistics principal component analysis (pca)/product/Alpha MOS
Average 90 stars, based on 1 article reviews
multivariate statistics principal component analysis (pca) - by Bioz Stars, 2026-05
90/100 stars
  Buy from Supplier

90
Umetrics statistical isolinear multiple component analysis-projection software umetrics version 14.0
FIGURE 4 The top-3 independent <t>components</t> of the spiking response of each trial type. (A) shows each stimulation type and the corresponding independent components over the trial time. Positive coefficients are correlated with spiking activity while negative coefficients are anti-correlated with spiking activity. In the scatter plots below, each component is shown as an axis and each trial is plotted as a point within the three dimensions. Exemplar trials are highlighted and shown in insets with spike rate over time. (B) shows how the component weights (boxes) scale the component shapes to describe the features of the mean firing rate of an example channel. The corresponding blue and green arrows point to the deviations in mean firing rate while the purple arrow and line generally indicate the background firing rate that are captured by the respective component and its weight. (C) shows the reconstruction (shaded yellow) of the mean spike rate of an example channel (black line) using the descriptive weightings of the independent components.
Statistical Isolinear Multiple Component Analysis Projection Software Umetrics Version 14.0, supplied by Umetrics, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/statistical isolinear multiple component analysis-projection software umetrics version 14.0/product/Umetrics
Average 90 stars, based on 1 article reviews
statistical isolinear multiple component analysis-projection software umetrics version 14.0 - by Bioz Stars, 2026-05
90/100 stars
  Buy from Supplier

Image Search Results


FIGURE 4 The top-3 independent components of the spiking response of each trial type. (A) shows each stimulation type and the corresponding independent components over the trial time. Positive coefficients are correlated with spiking activity while negative coefficients are anti-correlated with spiking activity. In the scatter plots below, each component is shown as an axis and each trial is plotted as a point within the three dimensions. Exemplar trials are highlighted and shown in insets with spike rate over time. (B) shows how the component weights (boxes) scale the component shapes to describe the features of the mean firing rate of an example channel. The corresponding blue and green arrows point to the deviations in mean firing rate while the purple arrow and line generally indicate the background firing rate that are captured by the respective component and its weight. (C) shows the reconstruction (shaded yellow) of the mean spike rate of an example channel (black line) using the descriptive weightings of the independent components.

Journal: Frontiers in neuroscience

Article Title: Post-ischemic reorganization of sensory responses in cerebral cortex.

doi: 10.3389/fnins.2023.1151309

Figure Lengend Snippet: FIGURE 4 The top-3 independent components of the spiking response of each trial type. (A) shows each stimulation type and the corresponding independent components over the trial time. Positive coefficients are correlated with spiking activity while negative coefficients are anti-correlated with spiking activity. In the scatter plots below, each component is shown as an axis and each trial is plotted as a point within the three dimensions. Exemplar trials are highlighted and shown in insets with spike rate over time. (B) shows how the component weights (boxes) scale the component shapes to describe the features of the mean firing rate of an example channel. The corresponding blue and green arrows point to the deviations in mean firing rate while the purple arrow and line generally indicate the background firing rate that are captured by the respective component and its weight. (C) shows the reconstruction (shaded yellow) of the mean spike rate of an example channel (black line) using the descriptive weightings of the independent components.

Article Snippet: We first applied principal components analysis (PCA; MATLAB R2017a + ‘pca’ function with ‘Algorithm’ parameter set to ‘svd’) to qualitatively describe the different types of evoked responses for each condition, applying a singular value decomposition to the mean channel spike rates separately for each stimulus type; then, using the groupings for which the same basis subspace could accurately reconstruct the original observations, we seeded a reconstructed-independent components analysis algorithm (r-ICA; MATLAB R2017a + ‘rica’ function from the Statistics and Machine Learning Toolbox) using the top-3 combined-basis eigenvectors to recover a basis for the sets of components described above (Supplementary Figure 6).

Techniques: Activity Assay

FIGURE 6 Combined independent component analysis of the sensory response and its modulation. (A) shows the mean weights of the components sorted by stimulation type and area which are displayed in (B). Positive values point to the presence of that component in the response while negative values indicate an inverse relationship; the error bars show the standard error of the mean. (C) displays the prediction of area and lesion volume for component 2 and 3 scores by the GLME model as compared to a linear fit. (D) highlights the changes in the component scores between Solenoid (yellow) and ICMS + Solenoid trials (purple) for each channel in an experimental block of an exemplar animal. (E) shows the reconstructed rates for each stimulation type by area. The mean component scores were used to weight each component and reconstruct the average response in spiking to stimulation.

Journal: Frontiers in neuroscience

Article Title: Post-ischemic reorganization of sensory responses in cerebral cortex.

doi: 10.3389/fnins.2023.1151309

Figure Lengend Snippet: FIGURE 6 Combined independent component analysis of the sensory response and its modulation. (A) shows the mean weights of the components sorted by stimulation type and area which are displayed in (B). Positive values point to the presence of that component in the response while negative values indicate an inverse relationship; the error bars show the standard error of the mean. (C) displays the prediction of area and lesion volume for component 2 and 3 scores by the GLME model as compared to a linear fit. (D) highlights the changes in the component scores between Solenoid (yellow) and ICMS + Solenoid trials (purple) for each channel in an experimental block of an exemplar animal. (E) shows the reconstructed rates for each stimulation type by area. The mean component scores were used to weight each component and reconstruct the average response in spiking to stimulation.

Article Snippet: We first applied principal components analysis (PCA; MATLAB R2017a + ‘pca’ function with ‘Algorithm’ parameter set to ‘svd’) to qualitatively describe the different types of evoked responses for each condition, applying a singular value decomposition to the mean channel spike rates separately for each stimulus type; then, using the groupings for which the same basis subspace could accurately reconstruct the original observations, we seeded a reconstructed-independent components analysis algorithm (r-ICA; MATLAB R2017a + ‘rica’ function from the Statistics and Machine Learning Toolbox) using the top-3 combined-basis eigenvectors to recover a basis for the sets of components described above (Supplementary Figure 6).

Techniques: Blocking Assay