Proposal and Verification of Novel Machine Learning on Classification Problems
This paper aims at proposing a new machine learning for classification problems. The classification problem has a wide range of applications, and there are many approaches such as decision trees, neural networks, and Bayesian nets. In this paper, we focus on the action of neurons in the brain, espec...
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Zusammenfassung: | This paper aims at proposing a new machine learning for classification
problems. The classification problem has a wide range of applications, and
there are many approaches such as decision trees, neural networks, and Bayesian
nets. In this paper, we focus on the action of neurons in the brain, especially
the EPSP/IPSP cancellation between excitatory and inhibitory synapses, and
propose a Machine Learning that does not belong to any conventional method. The
feature is to consider one neuron and give it a multivariable Xj (j = 1, 2,.)
and its function value F(Xj) as data to the input layer. The multivariable
input layer and processing neuron are linked by two lines to each variable
node. One line is called an EPSP edge, and the other is called an IPSP edge,
and a parameter {\Delta}j common to each edge is introduced. The processing
neuron is divided back and forth into two parts, and at the front side, a pulse
having a width 2{\Delta}j and a height 1 is defined around an input X . The
latter half of the processing neuron defines a pulse having a width 2{\Delta}j
centered on the input Xj and a height F(Xj) based on a value obtained from the
input layer of F(Xj). This information is defined as belonging to group i. In
other words, the group i has a width of 2{\Delta}j centered on the input Xj, is
defined in a region of height F(Xj), and all outputs of xi within the variable
range are F(Xi). This group is learned and stored by a few minutes of the
Teaching signals, and the output of the TEST signals is predicted by which
group the TEST signals belongs to. The parameter {\Delta}j is optimized so that
the accuracy of the prediction is maximized. The proposed method was applied to
the flower species classification problem of Iris, the rank classification
problem of used cars, and the ring classification problem of abalone, and the
calculation was compared with the neural networks. |
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DOI: | 10.48550/arxiv.2207.04884 |