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Here we will predict the quality of wine on the basis of given features. We use the wine quality dataset available on Internet for free. This dataset has the fundamental features which are responsible for affecting the quality of the wine. By the use of several Machine learning models, we will predict the quality of the wine. Importing libraries and Dataset:
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Now let’s look at the first five rows of the dataset. Python3
Output: ![]() First Five rows of the dataset Let’s explore the type of data present in each of the columns present in the dataset. Python3
Output: ![]() Information about columns of the data Now we’ll explore the descriptive statistical measures of the dataset. Python3
Output: Some descriptive statistical measures of the dataset[/caption]
Exploratory Data AnalysisEDA is an approach to analysing the data using visual techniques. It is used to discover trends, and patterns, or to check assumptions with the help of statistical summaries and graphical representations. Now let’s check the number of null values in the dataset columns wise. Python3
Output: ![]() Sum of null values column wise Let’s impute the missing values by means as the data present in the different columns are continuous values. Python3
Output: 0 Let’s draw the histogram to visualise the distribution of the data with continuous values in the columns of the dataset. >Python3
Output: ![]() Histograms for the columns containing continuous data Now let’s draw the count plot to visualise the number data for each quality of wine. Python3
Output: ![]() Count plot for each quality of wine There are times the data provided to us contains redundant features they do not help with increasing the model’s performance that is why we remove them before using them to train our model. Python3
Output: ![]() Heat map for highly correlated features From the above heat map we can conclude that the ‘total sulphur dioxide’ and ‘free sulphur dioxide‘ are highly correlated features so, we will remove them. Python3
Model DevelopmentLet’s prepare our data for training and splitting it into training and validation data so, that we can select which model’s performance is best as per the use case. We will train some of the state of the art machine learning classification models and then select best out of them using validation data. Python3
We have a column with object data type as well let’s replace it with the 0 and 1 as there are only two categories. Python3
After segregating features and the target variable from the dataset we will split it into 80:20 ratio for model selection. Python3
Output: ((5197, 11), (1300, 11)) Normalising the data before training help us to achieve stable and fast training of the model. Python3
As the data has been prepared completely let’s train some state of the art machine learning model on it. Python3
Output: ![]() Accuracy of the model for training and validation data Model EvaluationFrom the above accuracies we can say that Logistic Regression and SVC() classifier performing better on the validation data with less difference between the validation and training data. Let’s plot the confusion matrix as well for the validation data using the Logistic Regression model. Python3
Output: ![]() Confusion matrix drawn on the validation data Let’s also print the classification report for the best performing model. Python3
Output: ![]() Classification report for the validation data |
Reffered: https://www.geeksforgeeks.org
Machine Learning |
Type: | Geek |
Category: | Coding |
Sub Category: | Tutorial |
Uploaded by: | Admin |
Views: | 10 |