/clickbait-detector

Detects clickbait headlines using deep learning.

Primary LanguageJupyter NotebookGNU General Public License v3.0GPL-3.0

Clickbait Detector

Detects clickbait headlines using deep learning.

Find the Chrome Extension here ( built by rahulkapoor90 )

The doi for this project is https://doi.org/10.17605/OSF.IO/T3UJ9

Requirements

  • Python 2.7.12
  • Keras 1.2.1
  • Tensorflow 0.12.1
  • Numpy 1.11.1
  • NLTK 3.2.1

Getting Started

  1. Install a virtualenv in the project directory

    virtualenv venv
    
  2. Activate the virtualenv

    • On Windows:

      cd venv/Scripts
      activate
      
    • On Linux

      source venv/bin/activate
      
  3. Install the requirements

     pip install -r requirements.txt
    
  4. Try it out! Try running one of the examples.

Accuracy

Training Accuracy after 25 epochs = 93.8 % (loss = 0.1484)

Validation Accuracy after 25 epochs = 90.15 % (loss = 0.2670)

Examples

$ python src/detect.py "Novak Djokovic stunned as Australian Open title defence ends against Denis Istomin"
Using TensorFlow backend.
headline is 0.33 % clickbaity
$ python src/detect.py "Just 22 Cute Animal Pictures You Need Right Now"
Using TensorFlow backend.
headline is 85.38 % clickbaity
$ python src/detect.py " 15 Beautifully Created Doors You Need To See Before You Die. The One In Soho Blew Me Away"
Using TensorFlow backend.
headline is 52.29 % clickbaity
$ python src/detect.py "French presidential candidate Emmanuel Macrons anti-system angle is a sham | Philippe Marlire"
Using TensorFlow backend.
headline is 0.05 % clickbaity

Model Summary

____________________________________________________________________________________________________
Layer (type)                     Output Shape          Param #     Connected to                     
====================================================================================================
embedding_1 (Embedding)          (None, 20, 30)        195000      embedding_input_1[0][0]          
____________________________________________________________________________________________________
convolution1d_1 (Convolution1D)  (None, 19, 32)        1952        embedding_1[0][0]                
____________________________________________________________________________________________________
batchnormalization_1 (BatchNorma (None, 19, 32)        128         convolution1d_1[0][0]            
____________________________________________________________________________________________________
activation_1 (Activation)        (None, 19, 32)        0           batchnormalization_1[0][0]       
____________________________________________________________________________________________________
convolution1d_2 (Convolution1D)  (None, 18, 32)        2080        activation_1[0][0]               
____________________________________________________________________________________________________
batchnormalization_2 (BatchNorma (None, 18, 32)        128         convolution1d_2[0][0]            
____________________________________________________________________________________________________
activation_2 (Activation)        (None, 18, 32)        0           batchnormalization_2[0][0]       
____________________________________________________________________________________________________
convolution1d_3 (Convolution1D)  (None, 17, 32)        2080        activation_2[0][0]               
____________________________________________________________________________________________________
batchnormalization_3 (BatchNorma (None, 17, 32)        128         convolution1d_3[0][0]            
____________________________________________________________________________________________________
activation_3 (Activation)        (None, 17, 32)        0           batchnormalization_3[0][0]       
____________________________________________________________________________________________________
maxpooling1d_1 (MaxPooling1D)    (None, 1, 32)         0           activation_3[0][0]               
____________________________________________________________________________________________________
flatten_1 (Flatten)              (None, 32)            0           maxpooling1d_1[0][0]             
____________________________________________________________________________________________________
dense_1 (Dense)                  (None, 1)             33          flatten_1[0][0]                  
____________________________________________________________________________________________________
batchnormalization_4 (BatchNorma (None, 1)             4           dense_1[0][0]                    
____________________________________________________________________________________________________
activation_4 (Activation)        (None, 1)             0           batchnormalization_4[0][0]       
====================================================================================================
Total params: 201,533
Trainable params: 201,339
Non-trainable params: 194
____________________________________________________________________________________________________

Data

The dataset consists of about 12,000 headlines half of which are clickbait. The clickbait headlines were fetched from BuzzFeed, NewsWeek, The Times of India and, The Huffington Post. The genuine/non-clickbait headlines were fetched from The Hindu, The Guardian, The Economist, TechCrunch, The wall street journal, National Geographic and, The Indian Express.

Some of the data was from peterldowns's clickbait-classifier repository

Pretrained Embeddings

I used Stanford's Glove Pretrained Embeddings PCA-ed to 30 dimensions. This sped up the training.

Improving accuracy

To improve Accuracy,

  • Increase Embedding layer dimension (Currently it is 30) - src/preprocess_embeddings.py
  • Use more data
  • Increase vocabulary size - src/preprocess_text.py
  • Increase maximum sequence length - src/train.py
  • Do better data cleaning