An optimized MLP model to diagnosis the bipolar disorder

  • Authors

    • Mozhgan Mohammad Ghasemi Department of Computer and Informatics, Payame Noor University, Tehran
    • Mehdi Khalili Dept. of Computer and Informatics, Payame Noor University, Tehran
    2015-01-20
    https://doi.org/10.14419/jacst.v4i1.4038
  • ANN, MLP, BD.
  • The use of artificial neural networks in different areas of engineering science is growing by the day. The significant proportions of research in medical engineering, Therefore in this paper have tried to implemented MLP model with 47 parameters for diagnosis of bipolar disorder. Parameters such as: lack of pleasure, feelings of guilt, worthlessness, lack of success, mental anxiety, somatic anxiety disorder, the disorder of interest, etc. in next part, we done the manipulation structure of MLP model, for this work switching the function in layers. And comparing the error of manipulation structure with previous manipulation. We concluded with using purelin function in layers, the error of diagnosis reduces 4% and this value is an acceptable value.

  • References

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  • How to Cite

    Mohammad Ghasemi, M., & Khalili, M. (2015). An optimized MLP model to diagnosis the bipolar disorder. Journal of Advanced Computer Science & Technology, 4(1), 32-36. https://doi.org/10.14419/jacst.v4i1.4038