02.24 8:58 PM
type of data that we discuss in the logistic regression session.. WE 'll visit a Collab Notebook
and Implement one such K N model with the help of Scikit-learn Library. WE'll use pair plot
functionality in C bone Library to visualize the distribution of our data set and visualizing it will
give us an idea about how these features are affecting The classification. Data set has 13
features and one label that is the wine class. Based on that the wine is classified into three
further different categories. That is Class 0, Class 1 and Class 2.. Data set seems linearly
difficult. All the data samples seem to find cluster with other elements that belong to the same
category...
We 'll load the K n classifier from a scale on dot NEighbors Import K neighbor classifier. THe
metric that we 'll be using is again the Euclidean now let 's fit our data to this newly created
instance of our classifier, So k n 1 is equal to k Neighbors classifier and number of NEighbors
will be equal to 7. The next thing will be visualizing the accuracy and for that purpose we are
going to require the metrics framework available in Scikit-learn. Intellipat has [UNK] MAdras
ADvanced Data Science and [UNK] certification program. Intellipath has a very high quality and
cost effective course that is taught by [UNK] professors and Industry experts.. THe course is of
very high. quality and. cost effective as it is. taught by professors and industry experts.
type of data that we discuss in the logistic regression session.. WE 'll visit a Collab Notebook
and Implement one such K N model with the help of Scikit-learn Library. WE'll use pair plot
functionality in C bone Library to visualize the distribution of our data set and visualizing it will
give us an idea about how these features are affecting The classification. Data set has 13
features and one label that is the wine class. Based on that the wine is classified into three
further different categories. That is Class 0, Class 1 and Class 2.. Data set seems linearly
difficult. All the data samples seem to find cluster with other elements that belong to the same
category...
We 'll load the K n classifier from a scale on dot NEighbors Import K neighbor classifier. THe
metric that we 'll be using is again the Euclidean now let 's fit our data to this newly created
instance of our classifier, So k n 1 is equal to k Neighbors classifier and number of NEighbors
will be equal to 7. The next thing will be visualizing the accuracy and for that purpose we are
going to require the metrics framework available in Scikit-learn. Intellipat has [UNK] MAdras
ADvanced Data Science and [UNK] certification program. Intellipath has a very high quality and
cost effective course that is taught by [UNK] professors and Industry experts.. THe course is of
very high. quality and. cost effective as it is. taught by professors and industry experts.