Supervised Classification from Text (P)

Overview

MSc-Thesis

Module: Masters Research Thesis

Language: Python

Grade: 75

Title: An investigation of supervised classification of therapeutic process from text.

Description: Refining basic and advanced machine learning algorithms including MLPC neural nets, fine-tuned with grid-searching, to apply therapeutic process labels to therapist-patient transcribed conversation turns. This project aimed to run controls without data augmentation but then, crucially, implement varying level of data augmentation (30, 60 and 90% increased data) in addition to combining techniques, to assess whether it improves the outcome of the estimations. This project found novel and profound results not limited to those which will shape the future of all research in this field.

Contents: Code, Written report. NOTE* The code provided will not be in it's final form. Much testing was done after the 12,000 data points were collected and so it's advised you first read the other ReadMe in this repo and feel free to DM me with any queries.

Owner
Matthew Laws
First Class MSC Computer Science Grad. Data Science and Visualization focus. Python, R, HTML, JavaScript
Matthew Laws
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