Sebastian Raschka, 2015 # Python Machine Learning - Supplementary Datasets ## Wine Dataset - Used in chapters 4 and 5 The Wine dataset for classification. | | | |----------------------------|----------------| | Samples | 178 | | Features | 13 | | Classes | 3 | | Data Set Characteristics: | Multivariate | | Attribute Characteristics: | Integer, Real | | Associated Tasks: | Classification | | Missing Values | None | | column| attribute | |-----|------------------------------| | 1) | Class Label | | 2) | Alcohol | | 3) | Malic acid | | 4) | Ash | | 5) | Alcalinity of ash | | 6) | Magnesium | | 7) | Total phenols | | 8) | Flavanoids | | 9) | Nonflavanoid phenols | | 10) | Proanthocyanins | | 11) | intensity | | 12) | Hue | | 13) | OD280/OD315 of diluted wines | | 14) | Proline | | class | samples | |-------|----| | 0 | 59 | | 1 | 71 | | 2 | 48 | ### References - Forina, M. et al, PARVUS - An Extendible Package for Data Exploration, Classification and Correlation. Institute of Pharmaceutical and Food Analysis and Technologies, Via Brigata Salerno, 16147 Genoa, Italy. - Source: [https://archive.ics.uci.edu/ml/datasets/Wine](https://archive.ics.uci.edu/ml/datasets/Wine) - Bache, K. & Lichman, M. (2013). UCI Machine Learning Repository. Irvine, CA: University of California, School of Information and Computer Science.