Semi-Supervised Generative Adversarial Network for Stress Detection
Using Partially Labeled Physiological Data
- URL: http://arxiv.org/abs/2206.14976v1
- Date: Thu, 30 Jun 2022 01:58:33 GMT
- Title: Semi-Supervised Generative Adversarial Network for Stress Detection
Using Partially Labeled Physiological Data
- Authors: Nibraas Khan
- Abstract summary: Semi-Supervised algorithms are a viable method for inexpensive affective state detection systems.
This paper compares a fully supervised algorithm to a SSL on the public WESAD (Wearable Stress and Affect Detection) dataset for stress detection.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Physiological measurements involves observing variables that attribute to the
normative functioning of human systems and subsystems directly or indirectly.
The measurements can be used to detect affective states of a person with aims
such as improving human-computer interactions. There are several methods of
collecting physiological data, but wearable sensors are a common, non-invasive
tool for accurate readings. However, valuable information is hard to extract
from the raw physiological data, especially for affective state detection.
Machine Learning techniques are used to detect the affective state of a person
through labeled physiological data. A clear problem with using labeled data is
creating accurate labels. An expert is needed to analyze a form of recording of
participants and mark sections with different states such as stress and calm.
While expensive, this method delivers a complete dataset with labeled data that
can be used in any number of supervised algorithms. An interesting question
arises from the expensive labeling: how can we reduce the cost while
maintaining high accuracy? Semi-Supervised learning (SSL) is a potential
solution to this problem. These algorithms allow for machine learning models to
be trained with only a small subset of labeled data (unlike unsupervised which
use no labels). They provide a way of avoiding expensive labeling. This paper
compares a fully supervised algorithm to a SSL on the public WESAD (Wearable
Stress and Affect Detection) Dataset for stress detection. This paper shows
that Semi-Supervised algorithms are a viable method for inexpensive affective
state detection systems with accurate results.
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