首页> 外国专利> METHODS FOR PREDICTING LIKELIHOOD OF SUCCESSFUL EXPERIMENTAL SYNTHESIS OF COMPUTER-GENERATED MATERIALS BY COMBINING NETWORK ANALYSIS AND MACHINE LEARNING

METHODS FOR PREDICTING LIKELIHOOD OF SUCCESSFUL EXPERIMENTAL SYNTHESIS OF COMPUTER-GENERATED MATERIALS BY COMBINING NETWORK ANALYSIS AND MACHINE LEARNING

机译:网络分析与机器学习相结合的成功模拟计算机生成材料的模拟方法

摘要

One aspect of the disclosure relates to systems and methods for determining probabilities of successful synthesis of materials in the real world at one or more points in time. The probabilities of successful synthesis of materials in the real world at one or more points in time can be determined by representing the materials and their pre-defined relationships respectively as nodes and edges in a network form, and computation of the parameters of the nodes in the network as input to a classification model for successful synthesis. The classification model being configured to determine probabilities of successful synthesis of materials in the real world at one or more points in time.
机译:本公开的一个方面涉及用于确定在一个或多个时间点在现实世界中成功合成材料的概率的系统和方法。可以通过将材料及其预先定义的关系分别表示为网络形式的节点和边,并计算节点中的参数来确定在一个或多个时间点上在现实世界中成功合成材料的概率。网络作为分类模型的输入,以成功进行综合。分类模型被配置为确定在一个或多个时间点在现实世界中成功合成材料的概率。

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