Skip to content

To build a model to detect whether a sentence is sarcastic or not, using Bidirectional LSTMs

Notifications You must be signed in to change notification settings

Kavitha-Kothandaraman/Sarcasm-Detection-NLP

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

6 Commits
 
 
 
 
 
 

Repository files navigation

Sarcasm-Detection-NLP

Objective

To build a model to detect whether a sentence is sarcastic or not, using Bidirectional LSTMs

Problem Description

Past studies in Sarcasm Detection mostly make use of Twitter datasets collected using hashtag based supervision but such datasets are noisy in terms of labels and language. Furthermore, many tweets are replies to other tweets and detecting sarcasm in these requires the availability of contextual tweets.

Data Description

News Headlines dataset for Sarcasm Detection. The dataset is collected from two news websites, theonion.com and huffingtonpost.com. This new dataset has the following advantages over the existing Twitter datasets: Since news headlines are written by professionals in a formal manner, there are no spelling mistakes and informal usage. This reduces the sparsity and also increases the chance of finding pre-trained embedding. Furthermore, since the sole purpose of TheOnion is to publish sarcastic news, we get high-quality labels with much less noise as compared to Twitter datasets. Unlike tweets that reply to other tweets, the news headlines obtained are self-contained. This would help us in teasing apart the real sarcastic elements

Content

Each record consists of three attributes:

  • is_sarcastic: 1 if the record is sarcastic otherwise 0

  • headline: the headline of the news article

  • article_link: link to the original news article. Useful in collecting supplementary data

Steps to be followed

  1. Read and explore the data

  2. Drop one column

  3. Get length of each sentence

  4. Define parameters

  5. Get indices for words

  6. Create features and labels

  7. Get vocab size

  8. Create a weight matrix using GloVe embeddings

  9. Define and compile a Bidirectional LSTM model

  10. Fit the model and check the validation accuracy