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Stochastic Neighbor Embedding Algorithm Based on Quantum Genetic Algorithm with Gaussian Parameters

机译:基于高斯参数量子遗传算法的随机邻居嵌入算法

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Stochastic neighbor embedding algorithm is an important nonlinear dimension reduction manifold learning algorithm in the field of big data and machine learning. In the stochastic neighborhood embedding algorithm, it changes the idea of constant distance based on the medium in and, while mapping high-dimensional to low-dimensional, trying to ensure that the distribution probability of each other is consistent. The gradient descent method is often used to solve the problem of minimum divergence, but because the gradient descent method has the disadvantage of easily falling into local optimal values, this article combines SNE with a quantum genetic algorithm and uses the strong uncertainty of the quantum genetic algorithm and high convergence to solve the problem.
机译:随机邻居嵌入算法是大数据和机器学习领域中一种重要的非线性降维流形学习算法。在随机邻域嵌入算法中,它改变了基于中的介质的恒定距离的思想,并在将高维映射到低维时,试图确保彼此的分布概率是一致的。梯度下降法通常用于解决最小发散问题,但是由于梯度下降法具有容易陷入局部最优值的缺点,因此本文将SNE与量子遗传算法相结合,并利用了量子遗传的强不确定性算法和高收敛性来解决问题。

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