Text Classification Using LSTM

Overview

Text-Classification-Using-LSTM

Ontology Classification-Using-LSTM

Introduction

Text classification is the task of assigning a set of predefined categories to free text. Text classifiers can be used to organize, structure, and categorize pretty much anything. For example, new articles can be organized by topics, support tickets can be organized by urgency, chat conversations can be organized by language, brand mentions can be organized by sentiment, and so on.

Technologies Used

1. IDE - Pycharm
2. LSTM - As a classification Deep learning Model
3. GPU - P-4000
4. Google Colab - Text Analysis
5. Flas- Fast API
6. Postman - API Tester
7. Gensim - Word2Vec embeddings

🔑 Prerequisites All the dependencies and required libraries are included in the file requirements.txt

  Python 3.6

Dataset

The DBpedia ontology classification dataset is constructed by picking 14 non-overlapping classes from DBpedia 2014. They are listed in classes.txt. From each of thse 14 ontology classes, we randomly choose 40,000 training samples and 5,000 testing samples. Therefore, the total size of the training dataset is 560,000 and testing dataset 70,000. The files train.csv and test.csv contain all the training samples as comma-sparated values. There are 3 columns in them, corresponding to class index (1 to 14), title and content. The title and content are escaped using double quotes ("), and any internal double quote is escaped by 2 double quotes (""). There are no new lines in title or content.

For Dataset Please click here

Process - Flow of This project

🚀 Installation of Text-Classification-Using-LSTM

  1. Clone the repo
git clone https://github.com/KrishArul26/Text-Classification-DBpedia-ontology-classes-Using-LSTM.git
  1. Change your directory to the cloned repo
cd Text-Classification-DBpedia-ontology-classes-Using-LSTM

  1. Create a Python 3.6 version of virtual environment name 'lstm' and activate it
pip install virtualenv

virtualenv bert

lstm\Scripts\activate

  1. Now, run the following command in your Terminal/Command Prompt to install the libraries required!!!
pip install -r requirements.txt

💡 Working

Type the following command:

python app.py

After that You will see the running IP adress just copy and paste into you browser and import or upload your speech then closk the predict button.

Implementations

In this section, contains the project directory, explanation of each python file presents in the directory.

1. Project Directory

Below picture illustrate the complete folder structure of this project.

2. preprocess.py

Below picture illustrate the preprocess.py file, It does the necessary text cleaning process such as removing punctuation, numbers, lemmatization. And it will create train_preprocessed, validation_preprocessed and test_preprocessed pickle files for the further analysis.

3. word_embedder_gensim.py

Below picture illustrate the word_embedder_gensim.py, After done with text pre-processing, this file will take those cleaned text as input and will be creating the Word2vec embedding for each word.

4. rnn_w2v.py

Below picture illustrate the rnn_w2v.py, After done with creating Word2vec for each word then those vectors will use as input for creating the LSTM model and Train the LSTM (RNN) model with body and Classes.

5. index.htmml

Below picture illustrate the index.html file, these files use to create the web frame for us.

6. main.py

Below picture illustrate the main.py, After evaluating the LSTM model, This files will create the Rest -API, To that It will use FLASK frameworks and get the request from the customer or client then It will Post into the prediction files and Answer will be deliver over the web browser.

7. Testing Rest-API

Owner
KrishArul26
Google Certified - TensorFlow Developer | Google Cloud Associated Engineer | Enthusiastic in Machine Learning | Deep Learning | Object Detection | AI
KrishArul26
Contact Extraction with Question Answering.

contactsQA Extraction of contact entities from address blocks and imprints with Extractive Question Answering. Goal Input: Dr. Max Mustermann Hauptstr

Jan 2 Apr 20, 2022
✔👉A Centralized WebApp to Ensure Road Safety by checking on with the activities of the driver and activating label generator using NLP.

AI-For-Road-Safety Challenge hosted by Omdena Hyderabad Chapter Original Repo Link : https://github.com/OmdenaAI/omdena-india-roadsafety Final Present

Prathima Kadari 7 Nov 29, 2022
Gold standard corpus annotated with verb-preverb connections for Hungarian.

Hungarian Preverb Corpus A gold standard corpus manually annotated with verb-preverb connections for Hungarian. corpus The corpus consist of the follo

RIL Lexical Knowledge Representation Research Group 3 Jan 27, 2022
Sentiment Analysis Project using Count Vectorizer and TF-IDF Vectorizer

Sentiment Analysis Project This project contains two sentiment analysis programs for Hotel Reviews using a Hotel Reviews dataset from Datafiniti. The

Simran Farrukh 0 Mar 28, 2022
Just a basic Telegram AI chat bot written in Python using Pyrogram.

Nikko ChatBot Just a basic Telegram AI chat bot written in Python using Pyrogram. Requirements Python 3.7 or higher. A bot token. Installation $ https

ʀᴇxɪɴᴀᴢᴏʀ 2 Oct 21, 2022
Creating an LSTM model to generate music

Music-Generation Creating an LSTM model to generate music music-generator Used to create basic sin wave sounds music-ai Contains the functions to conv

Jerin Joseph 2 Dec 02, 2021
A number of methods in order to perform Natural Language Processing on live data derived from Twitter

A number of methods in order to perform Natural Language Processing on live data derived from Twitter

1 Nov 24, 2021
Code for the paper "BERT Loses Patience: Fast and Robust Inference with Early Exit".

Patience-based Early Exit Code for the paper "BERT Loses Patience: Fast and Robust Inference with Early Exit". NEWS: We now have a better and tidier i

Kevin Canwen Xu 54 Jan 04, 2023
Official implementation of MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis

MLP Singer Official implementation of MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis. Audio samples are available on our demo page.

Neosapience 103 Dec 23, 2022
Facebook AI Research Sequence-to-Sequence Toolkit written in Python.

Fairseq(-py) is a sequence modeling toolkit that allows researchers and developers to train custom models for translation, summarization, language mod

13.2k Jul 07, 2021
source code for paper: WhiteningBERT: An Easy Unsupervised Sentence Embedding Approach.

WhiteningBERT Source code and data for paper WhiteningBERT: An Easy Unsupervised Sentence Embedding Approach. Preparation git clone https://github.com

49 Dec 17, 2022
💥 Fast State-of-the-Art Tokenizers optimized for Research and Production

Provides an implementation of today's most used tokenizers, with a focus on performance and versatility. Main features: Train new vocabularies and tok

Hugging Face 6.2k Dec 31, 2022
STonKGs is a Sophisticated Transformer that can be jointly trained on biomedical text and knowledge graphs

STonKGs STonKGs is a Sophisticated Transformer that can be jointly trained on biomedical text and knowledge graphs. This multimodal Transformer combin

STonKGs 27 Aug 11, 2022
KoBART model on huggingface transformers

KoBART-Transformers SKT에서 공개한 KoBART를 편리하게 사용할 수 있게 transformers로 포팅하였습니다. Install (Optional) BartModel과 PreTrainedTokenizerFast를 이용하면 설치하실 필요 없습니다. p

Hyunwoong Ko 58 Dec 07, 2022
a CTF web challenge about making screenshots

screenshotter (web) A CTF web challenge about making screenshots. It is inspired by a bug found in real life. The challenge was created by @LiveOverfl

219 Jan 02, 2023
RIDE automatically creates the package and boilerplate OOP Python node scripts as per your needs

RIDE: ROS IDE RIDE automatically creates the package and boilerplate OOP Python code for nodes as per your needs (RIDE is not an IDE, but even ROS isn

Jash Mota 20 Jul 14, 2022
Code for the paper "Language Models are Unsupervised Multitask Learners"

Status: Archive (code is provided as-is, no updates expected) gpt-2 Code and models from the paper "Language Models are Unsupervised Multitask Learner

OpenAI 16.1k Jan 08, 2023
A repo for materials relating to the tutorial of CS-332 NLP

CS-332-NLP A repo for materials relating to the tutorial of CS-332 NLP Contents Tutorial 1: Introduction Corpus Regular expression Tokenization Tutori

Alok singh 9 Feb 15, 2022
Tools for curating biomedical training data for large-scale language modeling

Tools for curating biomedical training data for large-scale language modeling

BigScience Workshop 242 Dec 25, 2022
A natural language processing model for sequential sentence classification in medical abstracts.

NLP PubMed Medical Research Paper Abstract (Randomized Controlled Trial) A natural language processing model for sequential sentence classification in

Hemanth Chandran 1 Jan 17, 2022