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Published byJulie Alexander Modified over 9 years ago
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Haftu 201324487 Shamini 201424192 Thomas 201424190 Temesgen Seyoum 201425090
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Wine Rating is a score assigned by one or more wine critics. In most cases, wine ratings are set by single wine critic. Wine ratings are done with a scale of: ◦ 50-100 ◦ 0-10 ◦ 0-5
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We would like to automate the wine ratting system and replace the wine critics role with a data mining algorithm. The problem is of classification type. We would be classifying wine quality from class of 1 to 10. The problem is also of inference type as we would be interested in what kinds of attributes affect the quality of the wine the most.
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The data is gotten from the following link: ◦ https://archive.ics.uci.edu https://archive.ics.uci.edu Data set Characteristics: Multivariate Attribute Characteristics: Real Number of Instances: 4898 Number of Attributes: 12 Attributes Fixed acidity Volatile Acididty Citric acid Residual sugar Chlorides Free sulfur dioxide Total sulfur dioxide Density Ph Sulphates alchol Quality
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It has been indicated that it is uncertain that all input variables are really relevant, As such, we would be dealing with subset selections among the 11 attributes. We would be using K-fold cross validation. We currently presume to use k=10, though we might resort to iteratively choosing of the optimal k.
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Once we finished with the modeling, we will use the accuracy, specificity, sensitivity evaluation parameters to judge our results. We would include a confusion matrix to show the effectiveness of our model. We would express the error rate for each iteration of the K-fold validation.
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Thank You!
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