The Relationship Between Speech Features Changes When You Get Depressed:
Feature Correlations for Improving Speed and Performance of Depression
Detection
- URL: http://arxiv.org/abs/2307.02892v2
- Date: Fri, 7 Jul 2023 09:31:28 GMT
- Title: The Relationship Between Speech Features Changes When You Get Depressed:
Feature Correlations for Improving Speed and Performance of Depression
Detection
- Authors: Fuxiang Tao, Wei Ma, Xuri Ge, Anna Esposito, Alessandro Vinciarelli
- Abstract summary: This work shows that depression changes the correlation between features extracted from speech.
Using such an insight can improve the training speed and performance of depression detectors based on SVMs and LSTMs.
- Score: 69.88072583383085
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This work shows that depression changes the correlation between features
extracted from speech. Furthermore, it shows that using such an insight can
improve the training speed and performance of depression detectors based on
SVMs and LSTMs. The experiments were performed over the Androids Corpus, a
publicly available dataset involving 112 speakers, including 58 people
diagnosed with depression by professional psychiatrists. The results show that
the models used in the experiments improve in terms of training speed and
performance when fed with feature correlation matrices rather than with feature
vectors. The relative reduction of the error rate ranges between 23.1% and
26.6% depending on the model. The probable explanation is that feature
correlation matrices appear to be more variable in the case of depressed
speakers. Correspondingly, such a phenomenon can be thought of as a depression
marker.
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