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SELF-LEARNING LINEAR REGRESSION ON A DNA-COMPUTING PLATFORM

机译:包含DNA的平台上的自学习线性回归

摘要

A method and associated systems for using machine-learning methods to perform linear regression on a DNA-computing platform. One or more processors generate and initialize beta coefficients of a system of linear equations. These initial values are encoded into nucleobase chains that are then padded to a standard length. The chains are allowed to bind with complementary template chains in a DNA-computing reaction, and the resulting DNA molecules are decoded to reveal the relative the relative likelihood of each chain to bind. The initial values of the beta coefficients are weighted proportionally to these likelihoods, and the process is repeated iteratively until the beta coefficients converge to optimal values.
机译:一种使用机器学习方法在DNA计算平台上进行线性回归的方法和相关系统。一个或多个处理器生成并初始化线性方程组的beta系数。这些初始值被编码成核碱基链,然后被填充至标准长度。允许这些链在DNA计算反应中与互补模板链结合,然后对所得的DNA分子进行解码以揭示每条链结合的相对可能性。 Beta系数的初始值与这些可能性成比例地加权,并且迭代地重复该过程,直到Beta系数收敛到最佳值为止。

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