Perform sentiment analysis on textual data that people generally post on websites like social networks and movie review sites.

Overview

Sentiment Analyzer

The goal of this project is to perform sentiment analysis on textual data that people generally post on websites like social networks and movie review sites. At the moment, this project does a sentiment analysis on tweets (from twitter.com). It has two modes of operation

  • Offline mode: This mode relies on the discoproject (http://discoproject.org/), which is a MapReduce framework written in Erlang and Python and has a cool Python API. This mode can be used to fetch a large number of tweets using the Twitter Search API and to feature extract and classify them.
  • Online mode: Online mode has a Web UI written in Django. This mode can fetch only a thousand tweets for one request and classify them.

Technologies used and dependencies

You should never use Python without IPython!!! Although nothing in this project directly uses IPython or its API, it is highly recommended to install IPython 0.12 or later to make your life easier :-)

The following technologies/packages/libraries are used and hence required:

Base Requirements

  • The project is written in Python! So Python 2.7 is the bare minimum requirement. Note this project uses several features of Python 2.7 to make sure that the transition to Python 3.x will be smooth. So it is intentionally written not to support the previous versions of Python. Once the dependent libraries like Django are packages are ported to Python 3.x this project should theoritically run on Python 3.x, but it has not been tested as of now.
  • The classifier is implemented using Scikit-Learn (sklearn) library which is a Python machine learning library written on top of Python for Scientific Computing stack. So Scikit-Learn is required. This project runs only on the current bleeding edge version of Scikit-Learn. You need to git clone Scikit-Learn's repository from their github page and install it from there. The project uses some API that are not available in previous versions. So only Scikit-Learn 0.11+ works.
  • Since Scikit-Learn depends on Python for Scientific Computing stack. NumPy and SciPy which are the foundations of this stack are required.
  • Data persistence is achieved using MongoDB. So MongoDB v2.0.3 or later is required.
  • MongoEngine which is a Python API for MongoDB is used to make the Python components talk to MongoDB. So MongoEngine 0.6.2 or later is required.
  • requests library which is an awesome library for all HTTP related things in Python is used for fetching tweets through the Twitter Search API. So requests 0.10.4 is required.

MapReduce/Offline mode requirements

  • Discoproject needs to be installed for this mode. This needs the bleeding edge version of discoproject. So discoproject needs to be installed from their github repository.

Web UI/Online mode requirements

  • The WebUI is implemented using Django. But we use MongoDB as our data backend which is a NoSQL. Django still doesn't officially support any NoSQLs. So the thirdparty Django fork called Django-nonrel is required. The version of Django-nonrel that works with Django 1.3 or later is required for this mode.
  • For making Django components talk to MongoDB backend, djangotoolbox and Django MondoDB Engine are required. These can be any recent versions from their respective bitbucket and github repositories.
  • Additionally caching is supported for classified tweets in order to speedup the request-to-response cycle. This is implemented using Memcached. So Memcached 1.4.7 or later is required.
  • The Python API for Memcached PyLibMC is used to make Python components talk to Memcached backend. Bleeding edge of PyLibMC is used so, this needs to be git-cloned from their github repository.
  • django-mongonaut is used to provide Django admin like functionality on top of MongoDB. So django-mongonaut 0.2.11 or later is required.

Setting up

The steps to setup this project are

  • First of all, to get this code locally, git-clone this repository. The git clone URL is at the front page of this project.

  • Then make sure the package requirements as mentioned in the requirements section above are met.

  • You will need to create a Python file called datasettings.py in the project root directory. This file contains all the project specific settings that are local to your machine. The sample datasettings file is provided in the project root directory. If you want to reuse it just copy it to a new file and name it datasettings.py

  • For both modes of operation, the MongoDB database to connect to is defined in webui/fatninja/models.py with the line:

    mongoengine.connect('
         ')
    
        

    Replace the <> place holder with your database name. This is required for MapReduce/Offline mode too since we write the data to database even during MapReduce.

  • For running in Web UI/online mode you will also need local.py in the webui directory under project root. This file contains information either some sensitive information like the database name, password etc. A sample is provided. You can just copy it to a new file and call it local.py and replace all the placeholders shown by angular brackets (<>) with information specific to your machine.

What was the training data used and what else is required?

You need to create a data directory and point the settings variable DATA_DIRECTORY in your datasettings.py file to point to that location. Then you will need the training corpus. The training corpus used can be obtained from here:

http://www.sananalytics.com/lab/twitter-sentiment/

Build a training corpus out of it this data as a CSV file and name it full-corpus.csv. Place this CSV file under your data directory.

Additionally IMDB reviews classification was tried for training but it did not improve precision values in any way. So it was discared. If you are interested to experiment you can get that data from here:

http://alias-i.com/lingpipe/demos/tutorial/sentiment/read-me.html

These files can be directly placed under directories positive and negative under your data directory and the IMDB data parser in parser.py can be used to parse this data and fed into the classifier while training it. But this is left as an exercise :-)

Training the classifiers

Only the First Time, to train the classifiers and store the vectorizer and the trained classifier navigate to analyzer directory and run:

python train.py --serialize

Assuming you have setup everything else, this trains 3 classifiers

  • A Multinomial Naive-Bayes classifier
  • A Bernoulli's Naive-Bayes classifier
  • A Support-Vector Machine

and stores the trained classifiers in the given order in the serialized file called classifiers.pickle in your data directory:

This also stores the vectorizer object in the file vectorizer.pickle in your data directory.

Enough is enough, tell me how to run?

Ok finally! To run in the MapReduce/Offline mode navigate to analyzer directory and run:

$ python classification.py -q "Oscars" -p 10

where the argument to -q is the search query to search for tweets on twitter and the argument to -p is the number of pages of search results to fetch. Each page roughly contains 80-100 tweets and this option defaults to 10.

Usage:

$ python classification.py -h
usage: classification.py [-h] [-q Query] [-p [Pages]]

Classifier arguments.

optional arguments:
  -h, --help            show this help message and exit
  -q Query, --query Query
                        The query that must be used to search for tweets.
  -p [Pages], --pages [Pages]
                        Number of pages of tweets to fetch. One page is
                        approximately 100 tweets.

To run in the Web UI mode all you have to do is start the Django webserver. To do this navigate to webui directory and run:

$ python manage.py runserver

You can visit the URL that the Django webserver points to see how it runs.

Why discoproject for MapReduce, why not X?

The API of discoproject is much much cleaner, better and easier to use than Hadoop or any other related MapReduce APIs that we came across. Also, setting up discoproject is extremely easy. If we are not interested in installing discoproject, we can even run it from the source directory after git-cloning it! And it runs on Python! Not in any other X programming language that is defective-by-design! Also, on a single node cluster, discoproject seems to run faster than Hadoop at least. However we don't consider this as a win yet. We need to really profile discoproject and other frameworks on large clusters with Terabytes of data to know which actually outperforms the other.

AUTHORS

  • Ajay S. Narayan
  • Madhusudan.C.S
  • Shobhit N.S.

LICENSE and COPYRIGHT

The authors of this project are the sole copyright holders of the source code of this project, unless otherwise explicitly mentioned in the individual source files. The source code includes anything that can be written in any computer programming or scipting or markup languages.

This is an open source project licensed under Apache License v2.0. The terms and the conditions of the license is available in the "LICENSE" file.

You might also like...
Generate vector graphics from a textual caption
Generate vector graphics from a textual caption

VectorAscent: Generate vector graphics from a textual description Example "a painting of an evergreen tree" python text_to_painting.py --prompt "a pai

NLPIR tutorial: pretrain for IR. pre-train on raw textual corpus, fine-tune on MS MARCO Document Ranking

pretrain4ir_tutorial NLPIR tutorial: pretrain for IR. pre-train on raw textual corpus, fine-tune on MS MARCO Document Ranking 用作NLPIR实验室, Pre-training

Neural Lexicon Reader: Reduce Pronunciation Errors in End-to-end TTS by Leveraging External Textual Knowledge

Neural Lexicon Reader: Reduce Pronunciation Errors in End-to-end TTS by Leveraging External Textual Knowledge This is an implementation of the paper,

Simple, Pythonic, text processing--Sentiment analysis, part-of-speech tagging, noun phrase extraction, translation, and more.

TextBlob: Simplified Text Processing Homepage: https://textblob.readthedocs.io/ TextBlob is a Python (2 and 3) library for processing textual data. It

Summarization, translation, sentiment-analysis, text-generation and more at blazing speed using a T5 version implemented in ONNX.
Summarization, translation, sentiment-analysis, text-generation and more at blazing speed using a T5 version implemented in ONNX.

Summarization, translation, Q&A, text generation and more at blazing speed using a T5 version implemented in ONNX. This package is still in alpha stag

Simple, Pythonic, text processing--Sentiment analysis, part-of-speech tagging, noun phrase extraction, translation, and more.

TextBlob: Simplified Text Processing Homepage: https://textblob.readthedocs.io/ TextBlob is a Python (2 and 3) library for processing textual data. It

Summarization, translation, sentiment-analysis, text-generation and more at blazing speed using a T5 version implemented in ONNX.
Summarization, translation, sentiment-analysis, text-generation and more at blazing speed using a T5 version implemented in ONNX.

Summarization, translation, Q&A, text generation and more at blazing speed using a T5 version implemented in ONNX. This package is still in alpha stag

A combination of autoregressors and autoencoders using XLNet for sentiment analysis

A combination of autoregressors and autoencoders using XLNet for sentiment analysis Abstract In this paper sentiment analysis has been performed in or

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

Owner
Madhusudan.C.S
Madhusudan.C.S
Machine Learning Course Project, IMDB movie review sentiment analysis by lstm, cnn, and transformer

IMDB Sentiment Analysis This is the final project of Machine Learning Courses in Huazhong University of Science and Technology, School of Artificial I

Daniel 0 Dec 27, 2021
Easy to start. Use deep nerual network to predict the sentiment of movie review.

Easy to start. Use deep nerual network to predict the sentiment of movie review. Various methods, word2vec, tf-idf and df to generate text vectors. Various models including lstm and cov1d. Achieve f1 score 92.

null 1 Nov 19, 2021
Twitter-Sentiment-Analysis - Twitter sentiment analysis for india's top online retailers(2019 to 2022)

Twitter-Sentiment-Analysis Twitter sentiment analysis for india's top online retailers(2019 to 2022) Project Overview : Sentiment Analysis helps us to

Balaji R 1 Jan 1, 2022
Product-Review-Summarizer - Created a product review summarizer which clustered thousands of product reviews and summarized them into a maximum of 500 characters, saving precious time of customers and helping them make a wise buying decision.

Product-Review-Summarizer - Created a product review summarizer which clustered thousands of product reviews and summarized them into a maximum of 500 characters, saving precious time of customers and helping them make a wise buying decision.

Parv Bhatt 1 Jan 1, 2022
Perform sentiment analysis and keyword extraction on Craigslist listings

craiglist-helper synopsis Perform sentiment analysis and keyword extraction on Craigslist listings Background I love Craigslist. I've found most of my

Mark Musil 1 Nov 8, 2021
pysentimiento: A Python toolkit for Sentiment Analysis and Social NLP tasks

A Python multilingual toolkit for Sentiment Analysis and Social NLP tasks

null 297 Dec 29, 2022
Code for Findings of ACL 2022 Paper "Sentiment Word Aware Multimodal Refinement for Multimodal Sentiment Analysis with ASR Errors"

SWRM Code for Findings of ACL 2022 Paper "Sentiment Word Aware Multimodal Refinement for Multimodal Sentiment Analysis with ASR Errors" Clone Clone th

null 14 Jan 3, 2023
A machine learning model for analyzing text for user sentiment and determine whether its a positive, neutral, or negative review.

Sentiment Analysis on Yelp's Dataset Author: Roberto Sanchez, Talent Path: D1 Group Docker Deployment: Deployment of this application can be found her

Roberto Sanchez 0 Aug 4, 2021
IMDB film review sentiment classification based on BERT's supervised learning model.

IMDB film review sentiment classification based on BERT's supervised learning model. On the other hand, the model can be extended to other natural language multi-classification tasks.

Paris 1 Apr 17, 2022
NLP-based analysis of poor Chinese movie reviews on Douban

douban_embedding 豆瓣中文影评差评分析 1. NLP NLP(Natural Language Processing)是指自然语言处理,他的目的是让计算机可以听懂人话。 下面是我将2万条豆瓣影评训练之后,随意输入一段新影评交给神经网络,最终AI推断出的结果。 "很好,演技不错

null 3 Apr 15, 2022