/Quora-text-classification

This is project is based on the text classification using NLP .

Primary LanguageJupyter Notebook

Quora-text-classification

This is project is based on the text classification using NLP.

Prerequisites

 pip install scikit-learn
 pip install pandas
 pip install numpy
 pip install nltk

Text Classification with bag of words

Outline:
   -Download and explore the data
   -Apply text preprocessing techniques
   -Implement the bag of words model
   -Train ML models for text classification
   -Make predictions and submit to Kaggle

Download and Explore the Data

 Outline:
    -Download the dataset from kaggle to jupyter notebook
    -Explore the data using Pandas
    -Create a small working sample

Text Preprocessing Techniques

Outline:
    -Understand the bag of words model
    -Tokenization
    -Stop word removal
    -Stemming

Bag of words Intution

   -Create a list of all the words across all the text documents
   -Convert each document inot vector counts of each word
Limitations:
   -There may be too many words in the dataset
   -Some words may occur to frequently
   -Some words may occur very rarely or only once
   -A single word may have many forms(go,gone,going or bird vs birds)

Tokenization

Splitting a document into words and seperators

Stop Word Removal

Removing commonly occuring words

Stemming

 Stemming is the process of reducing a word to its base or root form, also known as a stem, by removing any prefixes or suffixes. The resulting stem may not      necessarily be a word itself, but it represents the core meaning of the word.
 Example:-"go","gone","going" ->"go
         "birds","bird" -> "bird"

Implement Bag of Words

Outline:
    -Create a vocabulary using Count Vectorizer
    -Transform text to vectors using Count Vectorizer
    -Configure text preprocessing in Count Vectorizer

ML Models for Text Classification

outline:
    -Create a training & validation set
    -Train a logisitic regression model
    -Make predicions on training,validation & test data

Dataset link :- https://www.kaggle.com/competitions/quora-insincere-questions-classification