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Prediction of Trait Anxiety in Humans

  • 2022
  • OriginalPaper
  • Chapter
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Abstract

The chapter delves into the pressing issue of anxiety as the most common psychological illness today, affecting a significant portion of the population. It discusses the historical and scientific definitions of anxiety, highlighting the need for reliable psychological biomarkers for diagnosis and risk assessment. The study leverages machine learning algorithms to predict anxiety levels in humans, utilizing the Taylor Manifest Anxiety Scale Response Data from Kaggle. The methodology involves data preprocessing, exploratory analysis, and the application of three machine learning techniques: Random Forest, K-Nearest Neighbor, and Support Vector Machine. The results demonstrate the superior performance of the Support Vector Machine algorithm in accurately predicting anxiety, with potential applications ranging from medical diagnostics to increased awareness. The chapter concludes by emphasizing the importance of early detection and the future scope of exploring other mental health conditions using machine learning models.

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Title
Prediction of Trait Anxiety in Humans
Authors
Tiya Kahai
Paarth Modgil
Ms Kavita
Rahul Saxena
Copyright Year
2022
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-19-5037-7_49
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