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adult.txt
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adult.txt
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| This data was extracted from the census bureau database found at
| http://www.census.gov/ftp/pub/DES/www/welcome.html
| Donor: Ronny Kohavi and Barry Becker,
| Data Mining and Visualization
| Silicon Graphics.
| e-mail: [email protected] for questions.
| Split into train-test using MLC++ GenCVFiles (2/3, 1/3 random).
| 48842 instances, mix of continuous and discrete (train=32561, test=16281)
| 45222 if instances with unknown values are removed (train=30162, test=15060)
| Duplicate or conflicting instances : 6
| Class probabilities for adult.all file
| Probability for the label '>50K' : 23.93% / 24.78% (without unknowns)
| Probability for the label '<=50K' : 76.07% / 75.22% (without unknowns)
|
| Extraction was done by Barry Becker from the 1994 Census database. A set of
| reasonably clean records was extracted using the following conditions:
| ((AAGE>16) && (AGI>100) && (AFNLWGT>1)&& (HRSWK>0))
|
| Prediction task is to determine whether a person makes over 50K
| a year.
|
| First cited in:
| @inproceedings{kohavi-nbtree,
| author={Ron Kohavi},
| title={Scaling Up the Accuracy of Naive-Bayes Classifiers: a
| Decision-Tree Hybrid},
| booktitle={Proceedings of the Second International Conference on
| Knowledge Discovery and Data Mining},
| year = 1996,
| pages={to appear}}
|
| Error Accuracy reported as follows, after removal of unknowns from
| train/test sets):
| C4.5 : 84.46+-0.30
| Naive-Bayes: 83.88+-0.30
| NBTree : 85.90+-0.28
|
|
| Following algorithms were later run with the following error rates,
| all after removal of unknowns and using the original train/test split.
| All these numbers are straight runs using MLC++ with default values.
|
| Algorithm Error
| -- ---------------- -----
| 1 C4.5 15.54
| 2 C4.5-auto 14.46
| 3 C4.5 rules 14.94
| 4 Voted ID3 (0.6) 15.64
| 5 Voted ID3 (0.8) 16.47
| 6 T2 16.84
| 7 1R 19.54
| 8 NBTree 14.10
| 9 CN2 16.00
| 10 HOODG 14.82
| 11 FSS Naive Bayes 14.05
| 12 IDTM (Decision table) 14.46
| 13 Naive-Bayes 16.12
| 14 Nearest-neighbor (1) 21.42
| 15 Nearest-neighbor (3) 20.35
| 16 OC1 15.04
| 17 Pebls Crashed. Unknown why (bounds WERE increased)
|
| Conversion of original data as follows:
| 1. Discretized agrossincome into two ranges with threshold 50,000.
| 2. Convert U.S. to US to avoid periods.
| 3. Convert Unknown to "?"
| 4. Run MLC++ GenCVFiles to generate data,test.
|
| Description of fnlwgt (final weight)
|
| The weights on the CPS files are controlled to independent estimates of the
| civilian noninstitutional population of the US. These are prepared monthly
| for us by Population Division here at the Census Bureau. We use 3 sets of
| controls.
| These are:
| 1. A single cell estimate of the population 16+ for each state.
| 2. Controls for Hispanic Origin by age and sex.
| 3. Controls by Race, age and sex.
|
| We use all three sets of controls in our weighting program and "rake" through
| them 6 times so that by the end we come back to all the controls we used.
|
| The term estimate refers to population totals derived from CPS by creating
| "weighted tallies" of any specified socio-economic characteristics of the
| population.
|
| People with similar demographic characteristics should have
| similar weights. There is one important caveat to remember
| about this statement. That is that since the CPS sample is
| actually a collection of 51 state samples, each with its own
| probability of selection, the statement only applies within
| state.
>50K, <=50K.
age: continuous.
workclass: Private, Self-emp-not-inc, Self-emp-inc, Federal-gov, Local-gov, State-gov, Without-pay, Never-worked.
fnlwgt: continuous.
education: Bachelors, Some-college, 11th, HS-grad, Prof-school, Assoc-acdm, Assoc-voc, 9th, 7th-8th, 12th, Masters, 1st-4th, 10th, Doctorate, 5th-6th, Preschool.
education-num: continuous.
marital-status: Married-civ-spouse, Divorced, Never-married, Separated, Widowed, Married-spouse-absent, Married-AF-spouse.
occupation: Tech-support, Craft-repair, Other-service, Sales, Exec-managerial, Prof-specialty, Handlers-cleaners, Machine-op-inspct, Adm-clerical, Farming-fishing, Transport-moving, Priv-house-serv, Protective-serv, Armed-Forces.
relationship: Wife, Own-child, Husband, Not-in-family, Other-relative, Unmarried.
race: White, Asian-Pac-Islander, Amer-Indian-Eskimo, Other, Black.
sex: Female, Male.
capital-gain: continuous.
capital-loss: continuous.
hours-per-week: continuous.
native-country: United-States, Cambodia, England, Puerto-Rico, Canada, Germany, Outlying-US(Guam-USVI-etc), India, Japan, Greece, South, China, Cuba, Iran, Honduras, Philippines, Italy, Poland, Jamaica, Vietnam, Mexico, Portugal, Ireland, France, Dominican-Republic, Laos, Ecuador, Taiwan, Haiti, Columbia, Hungary, Guatemala, Nicaragua, Scotland, Thailand, Yugoslavia, El-Salvador, Trinadad&Tobago, Peru, Hong, Holand-Netherlands.