论文标题

通过多模式深度学习预测在线视频广告效果

Predicting Online Video Advertising Effects with Multimodal Deep Learning

论文作者

Ikeda, Jun, Seshime, Hiroyuki, Wang, Xueting, Yamasaki, Toshihiko

论文摘要

随着视频广告市场的扩展,预测视频广告效果的研究受到了更多关注。尽管对图像广告的效果预测进行了很多探讨,但是对于很少的研究,视频广告的预测仍然具有挑战性。在这项研究中,我们提出了一种预测视频广告的点击率(CTR)并分析确定CTR的因素的方法。在本文中,我们演示了一个优化的框架,可通过利用在线视频广告(包括视频,文本和元数据功能)的多模式性质来准确预测效果。特别是,两种类型的元数据,即分类和连续的,是正确分开和标准化的。为了避免过度拟合,这对我们的任务至关重要,因为培训数据不是很丰富,插入了其他正则化层。实验结果表明,我们的方法可以达到高达0.695的相关系数,这与基线相比有了显着改善(0.487)。

With expansion of the video advertising market, research to predict the effects of video advertising is getting more attention. Although effect prediction of image advertising has been explored a lot, prediction for video advertising is still challenging with seldom research. In this research, we propose a method for predicting the click through rate (CTR) of video advertisements and analyzing the factors that determine the CTR. In this paper, we demonstrate an optimized framework for accurately predicting the effects by taking advantage of the multimodal nature of online video advertisements including video, text, and metadata features. In particular, the two types of metadata, i.e., categorical and continuous, are properly separated and normalized. To avoid overfitting, which is crucial in our task because the training data are not very rich, additional regularization layers are inserted. Experimental results show that our approach can achieve a correlation coefficient as high as 0.695, which is a significant improvement from the baseline (0.487).

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