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"""testing.ipynb
Automatically generated by Colaboratory.
Original file is located at
https://colab.research.google.com/drive/1MCstbEJ_U20yRJDGRmZTjIpGTCzTFL_o
"""
from google.colab import drive
drive.mount('/content/drive')
!pip install -qqq ftfy
!pip install -qqq json_file
!python -m spacy download en_core_web_lg
!pip install -U SpaCy==2.2.0
## Import required libraries
## warnings
import warnings
warnings.filterwarnings("ignore")
## for data
import numpy as np
import pandas as pd
## for plotting
import matplotlib.pyplot as plt
import seaborn as sns
## Bag of Words
from sklearn.feature_extraction.text import CountVectorizer
## TF-IDF
from sklearn.feature_extraction.text import TfidfVectorizer
## Train-Test Split
from sklearn.model_selection import train_test_split
## for processing
import nltk
import re
import ftfy
from nltk.stem import WordNetLemmatizer
from nltk.corpus import stopwords
nltk.download('stopwords')
nltk.download('punkt')
nltk.download('wordnet')
nltk.download('averaged_perceptron_tagger')
## Feature selection
from sklearn import feature_selection
## Support vector machine
from sklearn.pipeline import Pipeline
import sklearn.metrics as skm
from sklearn.metrics import confusion_matrix, accuracy_score
from sklearn.svm import SVC
## for saving and loading model
import pickle
## for word embedding with Spacy
import spacy
import en_core_web_lg
# ## for word embedding
# import gensim
# import gensim.downloader as gensim_api
# from gensim.models import Word2Vec
# from gensim.models import KeyedVectors
# from keras.preprocessing.text import Tokenizer
# from keras.preprocessing.sequence import pad_sequences
# ## for deep learning
# from keras.models import load_model
# from keras.models import Model, Sequential
# from keras.callbacks import EarlyStopping, ModelCheckpoint
# from keras.layers import Conv1D, Dense, Input, LSTM, Embedding, Dropout, Activation, MaxPooling1D
# from tensorflow.keras import models, layers, preprocessing as kprocessing
# from tensorflow.keras import backend as K
# from keras.models import model_from_json
# from keras.layers import Lambda
# import tensorflow as tf
# import json
# import json_file
# Expand Contraction
cList = {
"ain't": "am not",
"aren't": "are not",
"can't": "cannot",
"can't've": "cannot have",
"'cause": "because",
"could've": "could have",
"couldn't": "could not",
"couldn't've": "could not have",
"didn't": "did not",
"doesn't": "does not",
"don't": "do not",
"hadn't": "had not",
"hadn't've": "had not have",
"hasn't": "has not",
"haven't": "have not",
"he'd": "he would",
"he'd've": "he would have",
"he'll": "he will",
"he'll've": "he will have",
"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",
"isn't": "is not",
"it'd": "it had",
"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 is",
"that'd": "that would",
"that'd've": "that would have",
"that's": "that is",
"there'd": "there had",
"there'd've": "there would have",
"there's": "there 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 had",
"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'alls": "you alls",
"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 had",
"you'd've": "you would have",
"you'll": "you you will",
"you'll've": "you you will have",
"you're": "you are",
"you've": "you have"
}
c_re = re.compile('(%s)' % '|'.join(cList.keys()))
def expandContractions(text, c_re=c_re):
def replace(match):
return cList[match.group(0)]
return c_re.sub(replace, text)
## Function to perform stepwise cleaning process
def tweets_cleaner(tweet):
cleaned_tweets = []
tweet = tweet.lower() #lowercase
# if url links then don't append to avoid news articles
# also check tweet length, save those > 5
if re.match("(\w+:\/\/\S+)", tweet) == None and len(tweet) > 5:
#remove hashtag, @mention, emoji and image URLs
tweet = ' '.join(re.sub("(@[A-Za-z0-9]+)|(\#[A-Za-z0-9]+)|(<Emoji:.*>)|(pic\.twitter\.com\/.*)", " ", tweet).split())
#fix weirdly encoded texts
tweet = ftfy.fix_text(tweet)
#expand contraction
tweet = expandContractions(tweet)
#remove punctuation
tweet = ' '.join(re.sub("([^0-9A-Za-z \t])", " ", tweet).split())
#stop words and lemmatization
stop_words = set(stopwords.words('english'))
word_tokens = nltk.word_tokenize(tweet)
lemmatizer=WordNetLemmatizer()
filtered_sentence = [lemmatizer.lemmatize(word) for word in word_tokens if not word in stop_words]
# back to string from list
tweet = ' '.join(filtered_sentence) # join words with a space in between them
cleaned_tweets.append(tweet)
return cleaned_tweets
nlp = en_core_web_lg.load()
## Load the model
SVM = "/content/drive/MyDrive/NLP/Depression_Detection/modeling/model_svm.pkl"
with open(SVM, 'rb') as file:
clf = pickle.load(file)
clf
test_tweet = "I hate my life"
corpus = tweets_cleaner(test_tweet)
corpus
## word-embedding
test = pd.np.array([pd.np.array([token.vector for token in nlp(s)]).mean(axis=0) * pd.np.ones((300)) \
for s in corpus])
labels_pred = clf.predict(test)
labels_pred[0]
# loaded_model = model_from_json(open("/content/drive/MyDrive/NLP/Depression_Detection/modeling/model.json", "r").read(),
# custom_objects={'tf': tf})
# # load weights into new model
# loaded_model.load_weights("/content/drive/MyDrive/NLP/Depression_Detection/modeling/model.h5")
# print("Loaded model from disk") |