To develop a neural network classification model for the given dataset.
An automobile company has plans to enter new markets with their existing products. After intensive market research, they’ve decided that the behavior of the new market is similar to their existing market.
In their existing market, the sales team has classified all customers into 4 segments (A, B, C, D ). Then, they performed segmented outreach and communication for a different segment of customers. This strategy has work exceptionally well for them. They plan to use the same strategy for the new markets.
You are required to help the manager to predict the right group of the new customers.
Load the csv file and then use the preprocessing steps to clean the data
Split the data to training and testing
Train the data and then predict using Tensorflow
python3
import pandas as pd
from sklearn.model_selection import train_test_split
from tensorflow.keras.models import Sequential
from tensorflow.keras.models import load_model
import pickle
from tensorflow.keras.layers import Dense
from tensorflow.keras.layers import Dropout
from tensorflow.keras.layers import BatchNormalization
import tensorflow as tf
import seaborn as sns
from tensorflow.keras.callbacks import EarlyStopping
from sklearn.preprocessing import MinMaxScaler
from sklearn.preprocessing import LabelEncoder
from sklearn.preprocessing import OneHotEncoder
from sklearn.preprocessing import OrdinalEncoder
from sklearn.metrics import classification_report,confusion_matrix
import numpy as np
import matplotlib.pylab as plt
customer_df = pd.read_csv('customers.csv')
customer_df.columns
customer_df.dtypes
customer_df.shape
customer_df.isnull().sum()
customer_df_cleaned = customer_df.dropna(axis=0)
customer_df_cleaned.isnull().sum()
customer_df_cleaned.shape
customer_df_cleaned.dtypes
customer_df_cleaned['Gender'].unique()
customer_df_cleaned['Ever_Married'].unique()
customer_df_cleaned['Graduated'].unique()
customer_df_cleaned['Profession'].unique()
customer_df_cleaned['Spending_Score'].unique()
customer_df_cleaned['Var_1'].unique()
customer_df_cleaned['Segmentation'].unique()
categories_list=[['Male', 'Female'],
['No', 'Yes'],
['No', 'Yes'],
['Healthcare', 'Engineer', 'Lawyer', 'Artist', 'Doctor',
'Homemaker', 'Entertainment', 'Marketing', 'Executive'],
['Low', 'Average', 'High']
]
enc = OrdinalEncoder(categories=categories_list)
customers_1 = customer_df_cleaned.copy()
customers_1[['Gender',
'Ever_Married',
'Graduated','Profession',
'Spending_Score']] = enc.fit_transform(customers_1[['Gender',
'Ever_Married',
'Graduated','Profession',
'Spending_Score']])
customers_1.dtypes
le = LabelEncoder()
customers_1['Segmentation'] = le.fit_transform(customers_1['Segmentation'])
customers_1.dtypes
customers_1 = customers_1.drop('ID',axis=1)
customers_1 = customers_1.drop('Var_1',axis=1)
customers_1.dtypes
corr = customers_1.corr()
sns.heatmap(corr,
xticklabels=corr.columns,
yticklabels=corr.columns,
cmap="BuPu",
annot= True)
sns.pairplot(customers_1)
sns.distplot(customers_1['Age'])
plt.figure(figsize=(10,6))
sns.countplot(customers_1['Family_Size'])
plt.figure(figsize=(10,6))
sns.boxplot(x='Family_Size',y='Age',data=customers_1)
plt.figure(figsize=(10,6))
sns.scatterplot(x='Family_Size',y='Spending_Score',data=customers_1)
plt.figure(figsize=(10,6))
sns.scatterplot(x='Family_Size',y='Age',data=customers_1)
customers_1.describe()
customers_1['Segmentation'].unique()
X=customers_1[['Gender','Ever_Married','Age','Graduated','Profession','Work_Experience','Spending_Score','Family_Size']].values
y1 = customers_1[['Segmentation']].values
one_hot_enc = OneHotEncoder()
one_hot_enc.fit(y1)
y1.shape
y = one_hot_enc.transform(y1).toarray()
y.shape
y1[0]
y[0]
X.shape
X_train,X_test,y_train,y_test=train_test_split(X,y,
test_size=0.33,
random_state=50)
X_train[0]
X_train.shape
scaler_age = MinMaxScaler()
scaler_age.fit(X_train[:,2].reshape(-1,1))
X_train_scaled = np.copy(X_train)
X_test_scaled = np.copy(X_test)
X_train_scaled[:,2] = scaler_age.transform(X_train[:,2].reshape(-1,1)).reshape(-1)
X_test_scaled[:,2] = scaler_age.transform(X_test[:,2].reshape(-1,1)).reshape(-1)
ai_brain = Sequential([
Dense(8,input_shape=(8,)),
Dense(10,activation='relu'),
Dense(12,activation='relu'),
Dense(16,activation='relu'),
Dense(32,activation='relu'),
Dense(64,activation='relu'),
Dense(128,activation='relu'),
Dense(4,activation='softmax')
])
ai_brain.compile(optimizer='adam',
loss='categorical_crossentropy',
metrics=['accuracy'])
early_stop = EarlyStopping(monitor='val_loss', patience=2)
ai_brain.fit(x=X_train_scaled,y=y_train,
epochs=2000,batch_size=256,
validation_data=(X_test_scaled,y_test),
)
metrics = pd.DataFrame(ai_brain.history.history)
metrics.head()
metrics[['loss','val_loss']].plot()
predictions = ai_brain.predict_classes(X_test)
x_test_predictions = np.argmax(ai_brain.predict(X_test_scaled), axis=1)
x_test_predictions.shape
y_test_truevalue = np.argmax(y_test,axis=1)
y_test_truevalue.shape
print(confusion_matrix(y_test_truevalue,x_test_predictions))
print(classification_report(y_test_truevalue,x_test_predictions))
ai_brain.save('customer_classification_model.h5')
with open('customer_data.pickle', 'wb') as fh:
pickle.dump([X_train_scaled,y_train,X_test_scaled,y_test,customers_1,customer_df_cleaned,scaler_age,enc,one_hot_enc,le], fh)
ai_brain = load_model('customer_classification_model.h5')
with open('customer_data.pickle', 'rb') as fh:
[X_train_scaled,y_train,X_test_scaled,y_test,customers_1,customer_df_cleaned,scaler_age,enc,one_hot_enc,le]=pickle.load(fh)
x_single_prediction = np.argmax(ai_brain.predict(X_test_scaled[1:2,:]), axis=1)
print(x_single_prediction)
print(le.inverse_transform(x_single_prediction))
Thus a Neural Network Classification Model is created and executed successfully