Quality-Sensitive Training! Social Advertisement Generation by Leveraging User Click Behavior

Yongzhen Wang, Heng Huang, Yuliang Yan, Xiaozhong Liu
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引用次数: 6

Abstract

Social advertisement has emerged as a viable means to improve purchase sharing in the context of e-commerce. However, humanly generating lots of advertising scripts can be prohibitive to both e-platforms and online sellers, and moreover, developing the desired auto-generator will need substantial gold-standard training samples. In this paper, we put forward a novel seq2seq model to generate social advertisements automatically, in which a quality-sensitive loss function is proposed based on user click behavior to differentiate training samples of varied qualities. Our motivation is to leverage the clickthrough data as a kind of quality indicator to measure the textual fitness of each training sample quantitatively, and only those ground truths that satisfy social media users will be considered the eligible and able to optimize the social advertisement generation. Specifically, under the qualified case, the ground truth should be utilized to supervise the whole training phase as much as possible, whereas in the opposite situation, the generated result ought to preserve the semantics of original input to the greatest extent. Simulation experiments on a large-scale dataset demonstrate that our approach achieves a significant superiority over two existing methods of distant supervision and three state-of-the-art NLG solutions.
质量相关培训!利用用户点击行为生成社交广告
社交广告作为一种可行的手段在电子商务的背景下提高购买分享。然而,人工生成大量广告脚本可能会让电子平台和在线卖家望而却步,此外,开发所需的自动生成器将需要大量的黄金标准训练样本。本文提出了一种新的自动生成社交广告的seq2seq模型,该模型提出了一个基于用户点击行为的质量敏感损失函数来区分不同质量的训练样本。我们的动机是利用点击量数据作为一种质量指标,定量地衡量每个训练样本的文本适应度,只有那些满足社交媒体用户的基本事实才被认为是合格的,能够优化社交广告生成。具体来说,在限定情况下,应该尽可能地利用ground truth来监督整个训练阶段,而在相反情况下,生成的结果应该最大程度地保留原始输入的语义。在大规模数据集上的模拟实验表明,我们的方法比两种现有的远程监督方法和三种最先进的NLG解决方案取得了显著的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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