LGHCMay 29, 2023

Analysis of Perceived Stress Test using Machine Learning

arXiv:2305.18473v2Has Code
AI Analysis

It provides a new perspective for psychology by questioning the accuracy of stress test scales and offering insights for coping strategies, though it is incremental in applying existing ML methods to new data.

This study analyzed perceived stress levels in 150 individuals using machine learning on a 14-question test, revealing that test questions do not have equal importance and identifying distinct psychological patterns.

The aim of this study is to determine the perceived stress levels of 150 individuals and analyze the responses given to adapted questions in Turkish using machine learning. The test consists of 14 questions, each scored on a scale of 0 to 4, resulting in a total score range of 0-56. Out of these questions, 7 are formulated in a negative context and scored accordingly, while the remaining 7 are formulated in a positive context and scored in reverse. The test is also designed to identify two sub-factors: perceived self-efficacy and stress/discomfort perception. The main objectives of this research are to demonstrate that test questions may not have equal importance using artificial intelligence techniques, reveal which questions exhibit variations in the society using machine learning, and ultimately demonstrate the existence of distinct patterns observed psychologically. This study provides a different perspective from the existing psychology literature by repeating the test through machine learning. Additionally, it questions the accuracy of the scale used to interpret the results of the perceived stress test and emphasizes the importance of considering differences in the prioritization of test questions. The findings of this study offer new insights into coping strategies and therapeutic approaches in dealing with stress. Source code: https://github.com/toygarr/ppl-r-stressed

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