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PSO-based CNN for Keyword Selection on Google Ads

机译:基于PSO的CNN用于Google广告上的关键字选择

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Google Ads is a Google's advertising system for advertisers bid on keywords in order to have their clickable ads appear in Google's search results. The quality of the selected keywords can directly affect the advertiser's bidding cost and advertising effectiveness. However, there are a few challenges for keyword selection, as listed below. First, the number of the keywords in an ad cannot be too big due to cost constraints. Second, there could be a mixture of different language in the keywords. Third, there is the imbalance issue between `good' and `bad' keywords. Fourth, the effect of the typical keyword classification approach cannot produce satisfactory result. In this study, the evolutionary algorithm and deep learning are combined to deal with these challenges. By using word embedding to represent the keywords, choosing the appropriate corpus to handle the problem of mixed text with different languages, re-sampling to deal with data imbalance problem, using PSO to optimize the CNN structure and adding keyword-related features to improve classification effect, these difficulties are cleverly overcome. Finally, the keyword selection problems are successfully solved. This study is of great significance to the reduction of advertising investment cost and the increase in advertising efficiency.
机译:Google广告是谷歌广告系统,用于广告商在关键词中出价,以便在Google的搜索结果中出现他们的可点击广告。所选关键字的质量可以直接影响广告商的竞标成本和广告效果。但是,在下面列出的关键字选择存在一些挑战。首先,由于成本约束,广告中的关键字的数量不能太大。其次,在关键字中可能存在不同语言的混合。第三,“良好”和“坏”关键字之间存在不平衡问题。第四,典型关键字分类方法的效果不能产生令人满意的结果。在这项研究中,进化算法和深度学习组合以应对这些挑战。通过使用Word嵌入来表示关键字,选择适当的语料库来处理具有不同语言的混合文本的问题,使用PSO来处理数据不平衡问题,以优化CNN结构并添加关键字相关的功能以提高分类效果,这些困难巧妙地克服。最后,关键字选择问题已成功解决。本研究对减少广告投资成本和广告效率的增加具有重要意义。

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