Git Product home page Git Product logo

nlp-project's Introduction

Sentiment Analysis on Tweets

Status badge

Update(21 Sept. 2018): I don't actively maintain this repository. This work was done for a course project and the dataset cannot be released because I don't own the copyright. However, everything in this repository can be easily modified to work with other datasets. I recommend reading the sloppily written project report for this project which can be found in docs/.

Dataset Information

We use and compare various different methods for sentiment analysis on tweets (a binary classification problem). The training dataset is expected to be a csv file of type tweet_id,sentiment,tweet where the tweet_id is a unique integer identifying the tweet, sentiment is either 1 (positive) or 0 (negative), and tweet is the tweet enclosed in "". Similarly, the test dataset is a csv file of type tweet_id,tweet. Please note that csv headers are not expected and should be removed from the training and test datasets.

Requirements

There are some general library requirements for the project and some which are specific to individual methods. The general requirements are as follows.

  • numpy
  • scikit-learn
  • scipy
  • nltk

The library requirements specific to some methods are:

  • keras with TensorFlow backend for Logistic Regression, MLP, RNN (LSTM), and CNN.
  • xgboost for XGBoost.

Note: It is recommended to use Anaconda distribution of Python.

Usage

Preprocessing

  1. Run preprocess.py <raw-csv-path> on both train and test data. This will generate a preprocessed version of the dataset.
  2. Run stats.py <preprocessed-csv-path> where <preprocessed-csv-path> is the path of csv generated from preprocess.py. This gives general statistical information about the dataset and will two pickle files which are the frequency distribution of unigrams and bigrams in the training dataset.

After the above steps, you should have four files in total: <preprocessed-train-csv>, <preprocessed-test-csv>, <freqdist>, and <freqdist-bi> which are preprocessed train dataset, preprocessed test dataset, frequency distribution of unigrams and frequency distribution of bigrams respectively.

For all the methods that follow, change the values of TRAIN_PROCESSED_FILE, TEST_PROCESSED_FILE, FREQ_DIST_FILE, and BI_FREQ_DIST_FILE to your own paths in the respective files. Wherever applicable, values of USE_BIGRAMS and FEAT_TYPE can be changed to obtain results using different types of features as described in report.

Baseline

  1. Run baseline.py. With TRAIN = True it will show the accuracy results on training dataset.

Naive Bayes

  1. Run naivebayes.py. With TRAIN = True it will show the accuracy results on 10% validation dataset.

Maximum Entropy

  1. Run logistic.py to run logistic regression model OR run maxent-nltk.py <> to run MaxEnt model of NLTK. With TRAIN = True it will show the accuracy results on 10% validation dataset.

Decision Tree

  1. Run decisiontree.py. With TRAIN = True it will show the accuracy results on 10% validation dataset.

Random Forest

  1. Run randomforest.py. With TRAIN = True it will show the accuracy results on 10% validation dataset.

XGBoost

  1. Run xgboost.py. With TRAIN = True it will show the accuracy results on 10% validation dataset.

SVM

  1. Run svm.py. With TRAIN = True it will show the accuracy results on 10% validation dataset.

Multi-Layer Perceptron

  1. Run neuralnet.py. Will validate using 10% data and save the best model to best_mlp_model.h5.

Reccurent Neural Networks

  1. Run lstm.py. Will validate using 10% data and save models for each epock in ./models/. (Please make sure this directory exists before running lstm.py).

Convolutional Neural Networks

  1. Run cnn.py. This will run the 4-Conv-NN (4 conv layers neural network) model as described in the report. To run other versions of CNN, just comment or remove the lines where Conv layers are added. Will validate using 10% data and save models for each epoch in ./models/. (Please make sure this directory exists before running cnn.py).

Majority Vote Ensemble

  1. To extract penultimate layer features for the training dataset, run extract-cnn-feats.py <saved-model>. This will generate 3 files, train-feats.npy, train-labels.txt and test-feats.npy.
  2. Run cnn-feats-svm.py which uses files from the previous step to perform SVM classification on features extracted from CNN model.
  3. Place all prediction CSV files for which you want to take majority vote in ./results/ and run majority-voting.py. This will generate majority-voting.csv.

Information about other files

  • dataset/positive-words.txt: List of positive words.
  • dataset/negative-words.txt: List of negative words.
  • dataset/glove-seeds.txt: GloVe words vectors from StanfordNLP which match our dataset for seeding word embeddings.
  • Plots.ipynb: IPython notebook used to generate plots present in report.

nlp-project's People

Contributors

melanee-melanee avatar

Stargazers

 avatar  avatar  avatar

Watchers

 avatar  avatar

Recommend Projects

  • React photo React

    A declarative, efficient, and flexible JavaScript library for building user interfaces.

  • Vue.js photo Vue.js

    ๐Ÿ–– Vue.js is a progressive, incrementally-adoptable JavaScript framework for building UI on the web.

  • Typescript photo Typescript

    TypeScript is a superset of JavaScript that compiles to clean JavaScript output.

  • TensorFlow photo TensorFlow

    An Open Source Machine Learning Framework for Everyone

  • Django photo Django

    The Web framework for perfectionists with deadlines.

  • D3 photo D3

    Bring data to life with SVG, Canvas and HTML. ๐Ÿ“Š๐Ÿ“ˆ๐ŸŽ‰

Recommend Topics

  • javascript

    JavaScript (JS) is a lightweight interpreted programming language with first-class functions.

  • web

    Some thing interesting about web. New door for the world.

  • server

    A server is a program made to process requests and deliver data to clients.

  • Machine learning

    Machine learning is a way of modeling and interpreting data that allows a piece of software to respond intelligently.

  • Game

    Some thing interesting about game, make everyone happy.

Recommend Org

  • Facebook photo Facebook

    We are working to build community through open source technology. NB: members must have two-factor auth.

  • Microsoft photo Microsoft

    Open source projects and samples from Microsoft.

  • Google photo Google

    Google โค๏ธ Open Source for everyone.

  • D3 photo D3

    Data-Driven Documents codes.