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License: BSD 3-Clause "New" or "Revised" License

implementation-of-decision-tree-classifier-model-for-predicting-employee-churn's Introduction

EX 06-Implementation-of-Decision-Tree-Classifier-Model-for-Predicting-Employee-Churn

DATE: 13-03-2024

AIM:

To write a program to implement the Decision Tree Classifier Model for Predicting Employee Churn.

Equipments Required:

  1. Hardware โ€“ PCs
  2. Anaconda โ€“ Python 3.7 Installation / Jupyter notebook

Algorithm

  1. Import the required libraries.
  2. Upload and read the dataset.
  3. Check for any null values using the isnull() function.
  4. From sklearn.tree import DecisionTreeClassifier and use criterion as entropy.
  5. Find the accuracy of the model and predict the required values by importing the required module from sklearn.

Program:

Program to implement the Decision Tree Classifier Model for Predicting Employee Churn.
Developed by: praveen.v
RegisterNumber:  212222233004
import pandas as pd
data = pd.read_csv("Employee.csv")
data.head()
data.info()
data.isnull().sum()
data["left"].value_counts()
from sklearn.preprocessing import LabelEncoder
le = LabelEncoder()
data["salary"] = le.fit_transform(data["salary"])
data.head()
x = data[["satisfaction_level","last_evaluation","number_project","average_montly_hours","time_spend_company","Work_accident","promotion_last_5years","salary"]]
x.head()
y = data["left"]
from sklearn.model_selection import train_test_split
x_train,x_test,y_train,y_test = train_test_split(x,y,test_size=0.2,random_state=100)
from sklearn.tree import DecisionTreeClassifier
dt = DecisionTreeClassifier(criterion = "entropy")
dt.fit(x_train,y_train)
y_pred = dt.predict(x_test)
from sklearn import metrics
accuracy = metrics.accuracy_score(y_test,y_pred)
accuracy
dt.predict([[0.5,0.8,9,260,6,0,1,2]])

Output:

Data.Head():

image

Data.info():

image

isnull() and sum():

image

Data.Head() for salary:

image

MSE Value:

image

r2 Value:

image

Data Prediction:

image

Result:

Thus the program to implement the Decision Tree Classifier Model for Predicting Employee Churn is written and verified using python programming.

implementation-of-decision-tree-classifier-model-for-predicting-employee-churn's People

Contributors

akilamohan avatar praveenv23013808 avatar

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