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Stochastic transformation of quantum similarity matrices and their use in quantum QSAR (QQSAR) models

机译:量子相似性矩阵的随机变换及其在量子QSAR(QQSAR)模型中的使用

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摘要

A stochastic transformation of quantum similarity matrices is described and its role in the field of quantitative structure-activity relationship (QSAR) analyzed. The possible interest to manipulate in such a way a quantum similarity matrix, computed over a quantum object set, is diverse. First, any quantum similarity matrix column or row can easily become a discrete probability distribution, associable to a corresponding quantum object density function. Second, in order to ease its subsequent use, the resulting quantum stochastic matrix can be easily symmetrized, by means of any usual procedure or, as described here, by an inward matrix product algorithm. Third, the final matrix transform can be considered as a new quantum similarity index and can be used as a new quantum object descriptor in QSAR models. Fourth, such symmetric stochastic transform can acquire an interesting role in the approximate solution of the fundamental quantum QSAR (QQSAR) equation under various assumptions. Finally, a new algorithm, based on inward matrix product algebra, to obtain strictly positive constrained solutions of the fundamental QQSAR equation, is described. Some application examples are provided in order to illustrate the previous theoretical development. (C) 2000 John Wiley & Sons, Inc. [References: 39]
机译:描述了量子相似性矩阵的随机变换,并分析了其在定量结构-活性关系(QSAR)领域中的作用。以这种方式操作在一个量子物体组上计算出的量子相似性矩阵的可能兴趣是多样的。首先,任何量子相似性矩阵列或行都可以轻松地成为离散的概率分布,与相应的量子对象密度函数相关。其次,为了简化其随后的使用,可以通过任何常规程序或如本文所述通过内向矩阵乘积算法来容易地对称化所得的量子随机矩阵。第三,最终的矩阵变换可被视为新的量子相似性指标,并可在QSAR模型中用作新的量子对象描述符。第四,在各种假设下,这种对称随机变换可以在基本量子QSAR(QQSAR)方程的近似解中获得有趣的作用。最后,描述了一种基于内向矩阵乘积代数的新算法,用于获得基本QQSAR方程的严格正约束解。提供一些应用示例以说明先前的理论发展。 (C)2000 John Wiley&Sons,Inc. [参考:39]

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