A Comparative Study of Machine Learning Models for Tabular Data Through
Challenge of Monitoring Parkinson's Disease Progression Using Voice
Recordings
- URL: http://arxiv.org/abs/2005.14257v1
- Date: Wed, 27 May 2020 16:09:26 GMT
- Title: A Comparative Study of Machine Learning Models for Tabular Data Through
Challenge of Monitoring Parkinson's Disease Progression Using Voice
Recordings
- Authors: Mohammadreza Iman, Amy Giuntini, Hamid Reza Arabnia, and Khaled
Rasheed
- Abstract summary: We used a dataset of voice recordings of 42 people with early-stage Parkinson's disease over a time span of 6 months.
We applied multiple machine learning techniques to find a correlation between the voice recording and the patient's motor UPDRS score.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: People with Parkinson's disease must be regularly monitored by their
physician to observe how the disease is progressing and potentially adjust
treatment plans to mitigate the symptoms. Monitoring the progression of the
disease through a voice recording captured by the patient at their own home can
make the process faster and less stressful. Using a dataset of voice recordings
of 42 people with early-stage Parkinson's disease over a time span of 6 months,
we applied multiple machine learning techniques to find a correlation between
the voice recording and the patient's motor UPDRS score. We approached this
problem using a multitude of both regression and classification techniques.
Much of this paper is dedicated to mapping the voice data to motor UPDRS scores
using regression techniques in order to obtain a more precise value for unknown
instances. Through this comparative study of variant machine learning methods,
we realized some old machine learning methods like trees outperform cutting
edge deep learning models on numerous tabular datasets.
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