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Alzheimers Dementia Detection using Acoustic & Linguistic features and Pre-Trained BERT

Authors :
Valsaraj, Akshay
Madala, Ithihas
Garg, Nikhil
Baths, Veeky
Publication Year :
2021

Abstract

Alzheimers disease is a fatal progressive brain disorder that worsens with time. It is high time we have inexpensive and quick clinical diagnostic techniques for early detection and care. In previous studies, various Machine Learning techniques and Pre-trained Deep Learning models have been used in conjunction with the extraction of various acoustic and linguistic features. Our study focuses on three models for the classification task in the ADReSS (The Alzheimers Dementia Recognition through Spontaneous Speech) 2021 Challenge. We use the well-balanced dataset provided by the ADReSS Challenge for training and validating our models. Model 1 uses various acoustic features from the eGeMAPs feature-set, Model 2 uses various linguistic features that we generated from auto-generated transcripts and Model 3 uses the auto-generated transcripts directly to extract features using a Pre-trained BERT and TF-IDF. These models are described in detail in the models section.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.11010
Document Type :
Working Paper