TY - JOUR
T1 - MATHEMATICAL MODELING OF PSYCHOLOGICAL DISEASE BY USING ARTIFICIAL INTELLIGENCE TOOLS
AU - Alqudah, Manar A.
AU - Shah, Kamal
AU - Mofarreh, Fatemah
AU - Abdeljawad, Thabet
N1 - Publisher Copyright:
© 2026 World Scientific Publishing Company.
PY - 2026
Y1 - 2026
N2 - Recently, artificial intelligence (AI)-based tools have attracted great attention of researchers. AI-based neural networks (NNs) have been extensively used in recent times to investigate various real-world problems. One of the powerful tools recently applied in some epeiric diseases’ models is deep neural network (DNN). The mentioned DNNs consist of multiple layers which provide the best solutions to many problems like image recognition, natural language processing and speech recognition. Briefly, we can say that DNNs are some of the finest biologically inspired programming tools which enable a machine to learn from the provided observed data. Mathematical modeling is a hot area of research in recent times to investigate real-world problems. As we know, psychological diseases and mental disorder are common worldwide. Hence, worldwide, one of the largest public health issues is related to psychological disorders and their treatment. The World Health Organization (WHO) estimates that in 2017, one billion people struggled with mental illness and drug abuse disorders. Keeping this issue in mind, in this research work, we deduce a mathematical model to investigate the psychological diseases mathematical model by using modified-type fractional order derivative with Mittag-Leffler kernel. On using fixed point theory and numerical analysis, we deduce theoretical and numerical results for the proposed model. On using some real values for the parameters and initial conditions, we simulate the results graphically by using different fractional order values. Finally, we include the analysis based on DNNs by using the Levenberg–Marquardt algorithm to evaluate the prediction of our numerical results. Various graphical illustration have been provided.
AB - Recently, artificial intelligence (AI)-based tools have attracted great attention of researchers. AI-based neural networks (NNs) have been extensively used in recent times to investigate various real-world problems. One of the powerful tools recently applied in some epeiric diseases’ models is deep neural network (DNN). The mentioned DNNs consist of multiple layers which provide the best solutions to many problems like image recognition, natural language processing and speech recognition. Briefly, we can say that DNNs are some of the finest biologically inspired programming tools which enable a machine to learn from the provided observed data. Mathematical modeling is a hot area of research in recent times to investigate real-world problems. As we know, psychological diseases and mental disorder are common worldwide. Hence, worldwide, one of the largest public health issues is related to psychological disorders and their treatment. The World Health Organization (WHO) estimates that in 2017, one billion people struggled with mental illness and drug abuse disorders. Keeping this issue in mind, in this research work, we deduce a mathematical model to investigate the psychological diseases mathematical model by using modified-type fractional order derivative with Mittag-Leffler kernel. On using fixed point theory and numerical analysis, we deduce theoretical and numerical results for the proposed model. On using some real values for the parameters and initial conditions, we simulate the results graphically by using different fractional order values. Finally, we include the analysis based on DNNs by using the Levenberg–Marquardt algorithm to evaluate the prediction of our numerical results. Various graphical illustration have been provided.
KW - DNNs
KW - Mathematical Formulation
KW - Mental Disorder Disease
KW - Numerical and Theoretical Study
UR - https://www.scopus.com/pages/publications/105012238812
U2 - 10.1142/S0218348X25501014
DO - 10.1142/S0218348X25501014
M3 - Article
AN - SCOPUS:105012238812
SN - 0218-348X
VL - 34
JO - Fractals
JF - Fractals
IS - 1
M1 - 2550101
ER -