View datasets-UCI anneal (public)
























- Summary
(No information yet)
- License
- unknown (from Weka repository)
- Dependencies
- Tags
- arff slurped Weka
- Attribute Types
- Integer,String
- Download
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# Instances: 898 / # Attributes: 39
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- Original Data Format
- arff
- Name
- anneal
- Version mldata
- 0
- Comment
Title of Database: Annealing Data
Source Information: donated by David Sterling and Wray Buntine.
Past Usage: unknown
Relevant Information: -- Explanation: I suspect this was left by Ross Quinlan in 1987 at the 4th Machine Learning Workshop. I'd have to check with Jeff Schlimmer to double check this.
Number of Instances: 798
Number of Attributes: 38 -- 6 continuously-valued -- 3 integer-valued -- 29 nominal-valued
Attribute Information:
- family: --,GB,GK,GS,TN,ZA,ZF,ZH,ZM,ZS
- product-type: C, H, G
- steel: -,R,A,U,K,M,S,W,V
- carbon: continuous
- hardness: continuous
- temper_rolling: -,T
- condition: -,S,A,X
- formability: -,1,2,3,4,5
- strength: continuous
non-ageing: -,N
surface-finish: P,M,-
surface-quality: -,D,E,F,G
enamelability: -,1,2,3,4,5
bc: Y,-
bf: Y,-
bt: Y,-
bw/me: B,M,-
bl: Y,-
m: Y,-
chrom: C,-
phos: P,-
cbond: Y,-
marvi: Y,-
exptl: Y,-
ferro: Y,-
corr: Y,-
blue/bright/varn/clean: B,R,V,C,-
lustre: Y,-
jurofm: Y,-
s: Y,-
p: Y,-
shape: COIL, SHEET
thick: continuous
width: continuous
len: continuous
oil: -,Y,N
bore: 0000,0500,0600,0760
packing: -,1,2,3 classes: 1,2,3,4,5,U
-- The '-' values are actually 'not_applicable' values rather than 'missing_values' (and so can be treated as legal discrete values rather than as showing the absence of a discrete value).
Missing Attribute Values: Signified with "?" Attribute: Number of instances missing its value: 1 0 2 0 3 70 4 0 5 0 6 675 7 271 8 283 9 0 10 703 11 790 12 217 13 785 14 797 15 680 16 736 17 609 18 662 19 798 20 775 21 791 22 730 23 798 24 796 25 772 26 798 27 793 28 753 29 798 30 798 31 798 32 0 33 0 34 0 35 0 36 740 37 0 38 789 39 0
Distribution of Classes Class Name: Number of Instances: 1 8 2 88 3 608 4 0 5 60 U 34 --- 798
- Names
- family,product-type,steel,carbon,hardness,temper_rolling,condition,formability,strength,non-ageing,
- Types
- nominal:'?','GB','GK','GS','TN','ZA','ZF','ZH','ZM','ZS'
- nominal:'C','H','G'
- nominal:'?','R','A','U','K','M','S','W','V'
- numeric
- numeric
- nominal:'?','T'
- nominal:'?','S','A','X'
- nominal:'?','1','2','3','4','5'
- numeric
- nominal:'?','N'
- Data (first 10 data points)
family prod... steel carbon hard... temp... cond... form... stre... non-... ... '?' 'C' 'A' 8 0 '?' 'S' '?' 0 '?' ... '?' 'C' 'R' 0 0 '?' 'S' '2' 0 '?' ... '?' 'C' 'R' 0 0 '?' 'S' '2' 0 '?' ... '?' 'C' 'A' 0 60 'T' '?' '?' 0 '?' ... '?' 'C' 'A' 0 60 'T' '?' '?' 0 '?' ... '?' 'C' 'A' 0 45 '?' 'S' '?' 0 '?' ... '?' 'C' 'R' 0 0 '?' 'S' '2' 0 '?' ... '?' 'C' 'A' 0 0 '?' 'S' '2' 0 '?' ... '?' 'C' 'R' 0 0 '?' 'S' '2' 0 '?' ... '?' 'C' 'A' 0 0 '?' 'S' '3' 0 'N' ... ... ... ... ... ... ... ... ... ... ... ...
- Description
A jarfile containing 37 classification problems, originally obtained from the UCI repository (datasets-UCI.jar, 1,190,961 Bytes).
- URLs
- (No information yet)
- Publications
- Data Source
- http://www.ics.uci.edu/~mlearn/MLRepository.html
- Measurement Details
- Usage Scenario
- revision 1
- by mldata on 2010-11-06 09:57
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Acknowledgements
This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
http://www.pascal-network.org/.