The global spread of the COVID-19 virus has become one of the greatest challenges that humanity has faced in recent years. The unprecedented circumstances of forced isolation and uncertainty that it has imposed on us continue to impact our mental well-being, whether or not we have been directly affected by the virus. Over a period of nearly three years (2017-2020), data was collected from multiple administrations of the Rorschach test, one of the most renowned and extensively studied psychological tests. This study involved the clustering of data, collected through the RAP3 software, to analyze the distinctive trends in data recorded before and after the pandemic. This was achieved through the implementation of the well-established machine learning algorithm, Expectation-Maximization. The proposed solution effectively identifies the key variables that significantly influence the subject’s score and provides a reliable solution. Additionally, the solution offers an intuitive visualization that can assist psychologists in accurately interpreting shifts in trends and response distributions within a large amount of data in the two periods.

Analysis pre and post covid-19 pandemic rorschach test data of using em algorithms and gmm models / Ponzi, Valerio; Russo, Samuele; Agata, Wajda; Rafa, Brociek; Napoli, Christian. - 3360:(2022), pp. 55-63. (Intervento presentato al convegno SYSYEM 2022: 8th Scholar’s Yearly Symposium of Technology, Engineering and Mathematics tenutosi a Brunico; Italy).

Analysis pre and post covid-19 pandemic rorschach test data of using em algorithms and gmm models

Valerio Ponzi
Co-primo
Investigation
;
Samuele Russo
Secondo
Conceptualization
;
Christian Napoli
Ultimo
Supervision
2022

Abstract

The global spread of the COVID-19 virus has become one of the greatest challenges that humanity has faced in recent years. The unprecedented circumstances of forced isolation and uncertainty that it has imposed on us continue to impact our mental well-being, whether or not we have been directly affected by the virus. Over a period of nearly three years (2017-2020), data was collected from multiple administrations of the Rorschach test, one of the most renowned and extensively studied psychological tests. This study involved the clustering of data, collected through the RAP3 software, to analyze the distinctive trends in data recorded before and after the pandemic. This was achieved through the implementation of the well-established machine learning algorithm, Expectation-Maximization. The proposed solution effectively identifies the key variables that significantly influence the subject’s score and provides a reliable solution. Additionally, the solution offers an intuitive visualization that can assist psychologists in accurately interpreting shifts in trends and response distributions within a large amount of data in the two periods.
2022
SYSYEM 2022: 8th Scholar’s Yearly Symposium of Technology, Engineering and Mathematics
rorschach test; gaussian mixture model (GMM); expectation maximization (EM); principal component analysis (PCA);
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Analysis pre and post covid-19 pandemic rorschach test data of using em algorithms and gmm models / Ponzi, Valerio; Russo, Samuele; Agata, Wajda; Rafa, Brociek; Napoli, Christian. - 3360:(2022), pp. 55-63. (Intervento presentato al convegno SYSYEM 2022: 8th Scholar’s Yearly Symposium of Technology, Engineering and Mathematics tenutosi a Brunico; Italy).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1684839
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