amazon_text_sum / amazon_text_sum.py
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# -*- coding: utf-8 -*-
"""Amazon_text_sum.ipynb
Automatically generated by Colaboratory.
Original file is located at
https://colab.research.google.com/drive/1CD8zIL9GykU2qs8bHI-7l5akqA62b-jr
"""
#import all the required libraries
import numpy as np
import pandas as pd
import pickle
from statistics import mode
import nltk
from nltk import word_tokenize
from nltk.stem import LancasterStemmer
nltk.download('wordnet')
nltk.download('stopwords')
nltk.download('punkt')
from nltk.corpus import stopwords
from tensorflow.keras.models import Model
from tensorflow.keras import models
from tensorflow.keras import backend as K
from tensorflow.keras.preprocessing.sequence import pad_sequences
from tensorflow.keras.preprocessing.text import Tokenizer
from tensorflow.keras.utils import plot_model
from tensorflow.keras.layers import Input,LSTM,Embedding,Dense,Concatenate,Attention
from sklearn.model_selection import train_test_split
from bs4 import BeautifulSoup
reviews = pd.read_csv("/content/drive/MyDrive/amazon_text_summarizer/Reviews.csv",nrows=100000)
reviews.head(2)
#drop the duplicate and na values from the records
reviews.drop_duplicates(subset=['Text'],inplace=True)
reviews.dropna(axis=0,inplace=True)
input_data = reviews.loc[:,'Text']
target_data = reviews.loc[:,'Summary']
target_data.replace('', np.nan, inplace=True)
input_texts=[]
target_texts=[]
input_words=[]
target_words=[]
contractions = {"ain't": "is not", "aren't": "are not","can't": "cannot", "'cause": "because", "could've": "could have", "couldn't": "could not",
"didn't": "did not", "doesn't": "does not", "don't": "do not", "hadn't": "had not", "hasn't": "has not", "haven't": "have not",
"he'd": "he would","he'll": "he will", "he's": "he is", "how'd": "how did", "how'd'y": "how do you", "how'll": "how will", "how's": "how is",
"I'd": "I would", "I'd've": "I would have", "I'll": "I will", "I'll've": "I will have","I'm": "I am", "I've": "I have", "i'd": "i would",
"i'd've": "i would have", "i'll": "i will", "i'll've": "i will have","i'm": "i am", "i've": "i have", "isn't": "is not", "it'd": "it would",
"it'd've": "it would have", "it'll": "it will", "it'll've": "it will have","it's": "it is", "let's": "let us", "ma'am": "madam",
"mayn't": "may not", "might've": "might have","mightn't": "might not","mightn't've": "might not have", "must've": "must have",
"mustn't": "must not", "mustn't've": "must not have", "needn't": "need not", "needn't've": "need not have","o'clock": "of the clock",
"oughtn't": "ought not", "oughtn't've": "ought not have", "shan't": "shall not", "sha'n't": "shall not", "shan't've": "shall not have",
"she'd": "she would", "she'd've": "she would have", "she'll": "she will", "she'll've": "she will have", "she's": "she is",
"should've": "should have", "shouldn't": "should not", "shouldn't've": "should not have", "so've": "so have","so's": "so as",
"this's": "this is","that'd": "that would", "that'd've": "that would have", "that's": "that is", "there'd": "there would",
"there'd've": "there would have", "there's": "there is", "here's": "here is","they'd": "they would", "they'd've": "they would have",
"they'll": "they will", "they'll've": "they will have", "they're": "they are", "they've": "they have", "to've": "to have",
"wasn't": "was not", "we'd": "we would", "we'd've": "we would have", "we'll": "we will", "we'll've": "we will have", "we're": "we are",
"we've": "we have", "weren't": "were not", "what'll": "what will", "what'll've": "what will have", "what're": "what are",
"what's": "what is", "what've": "what have", "when's": "when is", "when've": "when have", "where'd": "where did", "where's": "where is",
"where've": "where have", "who'll": "who will", "who'll've": "who will have", "who's": "who is", "who've": "who have",
"why's": "why is", "why've": "why have", "will've": "will have", "won't": "will not", "won't've": "will not have",
"would've": "would have", "wouldn't": "would not", "wouldn't've": "would not have", "y'all": "you all",
"y'all'd": "you all would","y'all'd've": "you all would have","y'all're": "you all are","y'all've": "you all have",
"you'd": "you would", "you'd've": "you would have", "you'll": "you will", "you'll've": "you will have",
"you're": "you are", "you've": "you have"}
#initialize stop words and LancasterStemmer
stop_words=set(stopwords.words('english'))
stemm=LancasterStemmer()
def clean(texts,src):
#remove the html tags
texts = BeautifulSoup(texts, "lxml").text
#tokenize the text into words
words=word_tokenize(texts.lower())
#filter words which contains \
#integers or their length is less than or equal to 3
words= list(filter(lambda w:(w.isalpha() and len(w)>=3),words))
#contraction file to expand shortened words
words= [contractions[w] if w in contractions else w for w in words ]
#stem the words to their root word and filter stop words
if src=="inputs":
words= [stemm.stem(w) for w in words if w not in stop_words]
else:
words= [w for w in words if w not in stop_words]
return words
#pass the input records and taret records
for in_txt,tr_txt in zip(input_data,target_data):
in_words= clean(in_txt,"inputs")
input_texts+= [' '.join(in_words)]
input_words+= in_words
#add 'sos' at start and 'eos' at end of text
tr_words= clean("sos "+tr_txt+" eos","target")
target_texts+= [' '.join(tr_words)]
target_words+= tr_words
#store only unique words from input and target list of words
input_words = sorted(list(set(input_words)))
target_words = sorted(list(set(target_words)))
num_in_words = len(input_words) #total number of input words
num_tr_words = len(target_words) #total number of target words
#get the length of the input and target texts which appears most often
max_in_len = mode([len(i) for i in input_texts])
max_tr_len = mode([len(i) for i in target_texts])
print("number of input words : ",num_in_words)
print("number of target words : ",num_tr_words)
print("maximum input length : ",max_in_len)
print("maximum target length : ",max_tr_len)
#split the input and target text into 80:20 ratio or testing size of 20%.
x_train,x_test,y_train,y_test=train_test_split(input_texts,target_texts,test_size=0.2,random_state=0)
#train the tokenizer with all the words
in_tokenizer = Tokenizer()
in_tokenizer.fit_on_texts(x_train)
tr_tokenizer = Tokenizer()
tr_tokenizer.fit_on_texts(y_train)
#convert text into sequence of integers
#where the integer will be the index of that word
x_train= in_tokenizer.texts_to_sequences(x_train)
y_train= tr_tokenizer.texts_to_sequences(y_train)
#pad array of 0's if the length is less than the maximum length
en_in_data= pad_sequences(x_train, maxlen=max_in_len, padding='post')
dec_data= pad_sequences(y_train, maxlen=max_tr_len, padding='post')
#decoder input data will not include the last word
#i.e. 'eos' in decoder input data
dec_in_data = dec_data[:,:-1]
#decoder target data will be one time step ahead as it will not include
# the first word i.e 'sos'
dec_tr_data = dec_data.reshape(len(dec_data),max_tr_len,1)[:,1:]
K.clear_session()
latent_dim = 500
#create input object of total number of input words
en_inputs = Input(shape=(max_in_len,))
en_embedding = Embedding(num_in_words+1, latent_dim)(en_inputs)
#create 3 stacked LSTM layer with the shape of hidden dimension
#LSTM 1
en_lstm1= LSTM(latent_dim, return_state=True, return_sequences=True)
en_outputs1, state_h1, state_c1= en_lstm1(en_embedding)
#LSTM2
en_lstm2= LSTM(latent_dim, return_state=True, return_sequences=True)
en_outputs2, state_h2, state_c2= en_lstm2(en_outputs1)
#LSTM3
en_lstm3= LSTM(latent_dim,return_sequences=True,return_state=True)
en_outputs3 , state_h3 , state_c3= en_lstm3(en_outputs2)
#encoder states
en_states= [state_h3, state_c3]
# Decoder.
dec_inputs = Input(shape=(None,))
dec_emb_layer = Embedding(num_tr_words+1, latent_dim)
dec_embedding = dec_emb_layer(dec_inputs)
#initialize decoder's LSTM layer with the output states of encoder
dec_lstm = LSTM(latent_dim, return_sequences=True, return_state=True)
dec_outputs, *_ = dec_lstm(dec_embedding,initial_state=en_states)
#Attention layer
attention =Attention()
attn_out = attention([dec_outputs,en_outputs3])
#Concatenate the attention output with the decoder ouputs
merge=Concatenate(axis=-1, name='concat_layer1')([dec_outputs,attn_out])
#Dense layer (output layer)
dec_dense = Dense(num_tr_words+1, activation='softmax')
dec_outputs = dec_dense(merge)
#Mode class and model summary
model = Model([en_inputs, dec_inputs], dec_outputs)
model.summary()
plot_model(model, to_file='model_plot.png', show_shapes=True, show_layer_names=True)
model.compile(
optimizer="rmsprop", loss="sparse_categorical_crossentropy", metrics=["accuracy"] )
model.fit(
[en_in_data, dec_in_data],
dec_tr_data,
batch_size=512,
epochs=10,
validation_split=0.1,
)
#Save model
model.save("s2s")
# encoder inference
latent_dim=500
#load the model
model = models.load_model("s2s")
#construct encoder model from the output of 6 layer i.e.last LSTM layer
en_outputs,state_h_enc,state_c_enc = model.layers[6].output
en_states=[state_h_enc,state_c_enc]
#add input and state from the layer.
en_model = Model(model.input[0],[en_outputs]+en_states)
# decoder inference
#create Input object for hidden and cell state for decoder
#shape of layer with hidden or latent dimension
dec_state_input_h = Input(shape=(latent_dim,))
dec_state_input_c = Input(shape=(latent_dim,))
dec_hidden_state_input = Input(shape=(max_in_len,latent_dim))
# Get the embeddings and input layer from the model
dec_inputs = model.input[1]
dec_emb_layer = model.layers[5]
dec_lstm = model.layers[7]
dec_embedding= dec_emb_layer(dec_inputs)
#add input and initialize LSTM layer with encoder LSTM states.
dec_outputs2, state_h2, state_c2 = dec_lstm(dec_embedding, initial_state=[dec_state_input_h,dec_state_input_c])
#Attention layer
attention = model.layers[8]
attn_out2 = attention([dec_outputs2,dec_hidden_state_input])
merge2 = Concatenate(axis=-1)([dec_outputs2, attn_out2])
#Dense layer
dec_dense = model.layers[10]
dec_outputs2 = dec_dense(merge2)
# Finally define the Model Class
dec_model = Model(
[dec_inputs] + [dec_hidden_state_input,dec_state_input_h,dec_state_input_c],
[dec_outputs2] + [state_h2, state_c2])
#create a dictionary with a key as index and value as words.
reverse_target_word_index = tr_tokenizer.index_word
reverse_source_word_index = in_tokenizer.index_word
target_word_index = tr_tokenizer.word_index
reverse_target_word_index[0]=' '
def decode_sequence(input_seq):
#get the encoder output and states by passing the input sequence
en_out, en_h, en_c= en_model.predict(input_seq)
#target sequence with inital word as 'sos'
target_seq = np.zeros((1, 1))
target_seq[0, 0] = target_word_index['sos']
#if the iteration reaches the end of text than it will be stop the iteration
stop_condition = False
#append every predicted word in decoded sentence
decoded_sentence = ""
while not stop_condition:
#get predicted output, hidden and cell state.
output_words, dec_h, dec_c= dec_model.predict([target_seq] + [en_out,en_h, en_c])
#get the index and from the dictionary get the word for that index.
word_index = np.argmax(output_words[0, -1, :])
text_word = reverse_target_word_index[word_index]
decoded_sentence += text_word +" "
# Exit condition: either hit max length
# or find a stop word or last word.
if text_word == "eos" or len(decoded_sentence) > max_tr_len:
stop_condition = True
#update target sequence to the current word index.
target_seq = np.zeros((1, 1))
target_seq[0, 0] = word_index
en_h, en_c = dec_h, dec_c
#return the deocded sentence
return decoded_sentence
inp_review = input("Enter : ")
print("Review :",inp_review)
inp_review = clean(inp_review,"inputs")
inp_review = ' '.join(inp_review)
inp_x= in_tokenizer.texts_to_sequences([inp_review])
inp_x= pad_sequences(inp_x, maxlen=max_in_len, padding='post')
summary=decode_sequence(inp_x.reshape(1,max_in_len))
if 'eos' in summary :
summary=summary.replace('eos','')
print("\nPredicted summary:",summary);print("\n")