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Scatterplot of the data set. The Iris flower data set or Fisher's Iris data set is a multivariate data set used and made famous by the British statistician and biologist Ronald Fisher in his 1936 paper The use of multiple measurements in taxonomic problems as an example of linear discriminant analysis. [1]
An example of a decision stump that discriminates between two of three classes of Iris flower data set: Iris versicolor and Iris virginica. The petal width is in centimetres. This particular stump achieves 94% accuracy on the Iris dataset for these two classes. A decision stump is a machine learning model consisting of a one-level decision tree ...
In 1936, he introduced the Iris flower data set as an example of discriminant analysis. [67] In his 1937 paper The wave of advance of advantageous genes he proposed Fisher's equation in the context of population dynamics to describe the spatial spread of an advantageous allele, and explored its travelling wave solutions. [68]
Iris is a flowering plant genus of 310 accepted species [1] with showy flowers.As well as being the scientific name, iris is also widely used as a common name for all Iris species, as well as some belonging to other closely related genera.
Iris versicolor is a flowering herbaceous perennial plant, growing 10–80 cm (4–31 in) high.() It tends to form large clumps from thick, creeping rhizomes.The unwinged, erect stems generally have basal leaves that are more than 1 cm (1 ⁄ 2 in) wide.
Iris foetidissima L. – Stinking Iris, Gladwin Iris, Stinking Gladwin, Gladdon, Roast-beef Plant; Series Hexagonae (known as the Louisiana irises) Iris brevicaulis Raf. – Zigzag Iris; Iris fulva Ker-Gawl. – Copper Iris; Iris giganticaerulea – Giant Blue Iris, Giant Blue Flag; Iris hexagona Walt. – Dixie Iris; Iris nelsonii Randolph ...
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Deutsch: Iris flower data set, mit dem k-Means-Algorithmus analysiert (links) und die wahren Spezien im Datensatz (rechts). Da k-means nicht deterministisch ist, variieren die Ergebnisse. Die Clusterzentren sind durch größere, halbtransparente Markierungen eingezeichnet.