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WEB INTERFACE GENERATION AND TESTING USING ARTIFICIAL NEURAL NETWORKS

机译:使用人工神经网络进行Web界面生成和测试

摘要

Roughly described, the technology disclosed provides a so-called machine learned conversion optimization (MLCO) system that uses evolutionary computations to efficiently identify most successful webpage designs in a search space without testing all possible webpage designs in the search space. The search space is defined based on webpage designs provided by marketers. Website funnels with a single webpage or multiple webpages are represented as genomes. Genomes identify different dimensions and dimension values of the funnels. The genomes are subjected to evolutionary operations like initialization, testing, competition, and procreation to identify parent genomes that perform well and offspring genomes that are likely to perform well. Each webpage is tested only to the extent that it is possible to decide whether it is promising, i.e., whether it should serve as a parent for the next generation, or should be discarded.
机译:粗略地描述,所公开的技术提供了一种所谓的机器学习转换优化(MLCO)系统,该系统使用进化计算来有效地标识搜索空间中最成功的网页设计,而无需测试搜索空间中所有可能的网页设计。搜索空间是根据营销商提供的网页设计定义的。具有单个网页或多个网页的网站渠道表示为基因组。基因组识别漏斗的不同尺寸和尺寸值。对基因组进行诸如初始化,测试,竞争和繁殖等进化操作,以鉴定表现良好的亲本基因组和可能表现良好的后代基因组。仅在可以决定它是否有希望的程度(即,它应该作为下一代的父级还是应该丢弃)的范围内测试每个网页。

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