This repository contains code and associated files for deploying a plagiarism detector using AWS SageMaker.
This project is about building a plagiarism detector that examines a text file and performs binary classification; labeling that file as either plagiarized or not, depending on how similar that text file is to a provided source text. Detecting plagiarism is an active area of research; the task is non-trivial and the differences between paraphrased answers and original work are often not so obvious.
This project will be broken down into three main notebooks:
Notebook 1: Data Exploration
- Loading in the corpus of plagiarism text data.
- Exploring the existing data features and the data distribution.
Notebook 2: Feature Engineering
- Cleaning and pre-processing the text data.
- Defineing features for comparing the similarity of an answer text and a source text, and extract similarity features.
- Selecting "good" features, by analyzing the correlations between different features.
- Createing train/test
.csv
files that hold the relevant features and class labels for train/test data points.
Notebook 3: Train and Deploy The Model in SageMaker
- Uploading train/test feature data to S3.
- Defineing a binary classification model and a training script.
- Training the model and deploy it using SageMaker.
- Evaluate the deployed classifier.