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PCA Score plot
InterdisciplinaryNature MethodsPrincipal Component Analysis(PCA)2D score plot, Show clustering relationships among samples.
Publisher: OOPLOT
Published: 2026/4/1
ID: 22
Usage: 0·Views: 0·Favorites: 0
PYTHONmatplotlibsklearn
Parameters (6)
- • Width (Default: 8)
- • Height (Default: 8)
- • DPI (Default: 300)
- • Transparency (Default: 0.7)
- • Point size (Default: 60)
- • and 1 more parameters...
Template Inheritance
Parent:None
Children:None
Data Format Requirements
Required Columns
- Sample label(First column)CategoricalRequired
Row Constraints: At least 6 rows
Example Data
You can directly copy and save as data.csv for upload.
Label,Feature1,Feature2,Feature3
GroupA,2.3,5.1,3.8
GroupA,2.5,5.3,3.9
GroupA,2.1,4.9,3.7
GroupA,2.4,5.2,3.6
GroupA,2.6,5.0,4.0
GroupB,7.2,6.5,8.1
GroupB,7.0,6.7,8.0
GroupB,7.3,6.4,8.2
GroupB,7.1,6.6,7.9
GroupB,7.4,6.8,8.3
GroupC,1.1,2.9,4.4
GroupC,1.3,3.0,4.5
GroupC,1.0,2.8,4.3
GroupC,1.2,3.1,4.2
GroupC,1.4,2.7,4.6Chart Preview
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