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📄 iris.names

📁 IRIS数据 用于聚类方法 主要用于模式识别、图像分割等
💻 NAMES
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1. Title: Iris Plants Database	Updated Sept 21 by C.Blake - Added discrepency information2. Sources:     (a) Creator: R.A. Fisher     (b) Donor: Michael Marshall (MARSHALL%PLU@io.arc.nasa.gov)     (c) Date: July, 19883. Past Usage:   - Publications: too many to mention!!!  Here are a few.   1. Fisher,R.A. "The use of multiple measurements in taxonomic problems"      Annual Eugenics, 7, Part II, 179-188 (1936); also in "Contributions      to Mathematical Statistics" (John Wiley, NY, 1950).   2. Duda,R.O., & Hart,P.E. (1973) Pattern Classification and Scene Analysis.      (Q327.D83) John Wiley & Sons.  ISBN 0-471-22361-1.  See page 218.   3. Dasarathy, B.V. (1980) "Nosing Around the Neighborhood: A New System      Structure and Classification Rule for Recognition in Partially Exposed      Environments".  IEEE Transactions on Pattern Analysis and Machine      Intelligence, Vol. PAMI-2, No. 1, 67-71.      -- Results:         -- very low misclassification rates (0% for the setosa class)   4. Gates, G.W. (1972) "The Reduced Nearest Neighbor Rule".  IEEE       Transactions on Information Theory, May 1972, 431-433.      -- Results:         -- very low misclassification rates again   5. See also: 1988 MLC Proceedings, 54-64.  Cheeseman et al's AUTOCLASS II      conceptual clustering system finds 3 classes in the data.4. Relevant Information:   --- This is perhaps the best known database to be found in the pattern       recognition literature.  Fisher's paper is a classic in the field       and is referenced frequently to this day.  (See Duda & Hart, for       example.)  The data set contains 3 classes of 50 instances each,       where each class refers to a type of iris plant.  One class is       linearly separable from the other 2; the latter are NOT linearly       separable from each other.   --- Predicted attribute: class of iris plant.   --- This is an exceedingly simple domain.   --- This data differs from the data presented in Fishers article	(identified by Steve Chadwick,  spchadwick@espeedaz.net )	The 35th sample should be: 4.9,3.1,1.5,0.2,"Iris-setosa"	where the error is in the fourth feature.	The 38th sample: 4.9,3.6,1.4,0.1,"Iris-setosa"	where the errors are in the second and third features.  5. Number of Instances: 150 (50 in each of three classes)6. Number of Attributes: 4 numeric, predictive attributes and the class7. Attribute Information:   1. sepal length in cm   2. sepal width in cm   3. petal length in cm   4. petal width in cm   5. class:       -- Iris Setosa      -- Iris Versicolour      -- Iris Virginica8. Missing Attribute Values: NoneSummary Statistics:	         Min  Max   Mean    SD   Class Correlation   sepal length: 4.3  7.9   5.84  0.83    0.7826       sepal width: 2.0  4.4   3.05  0.43   -0.4194   petal length: 1.0  6.9   3.76  1.76    0.9490  (high!)    petal width: 0.1  2.5   1.20  0.76    0.9565  (high!)9. Class Distribution: 33.3% for each of 3 classes.

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