Conversational Context-Sensitive Ad Generation With a Few Core-Queries

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Ryoichi Shibata, Shoya Matsumori, Yosuke Fukuchi, Tomoyuki Maekawa, Mitsuhiko Kimoto, Michita Imai
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Abstract

When people are talking together in front of digital signage, advertisements that are aware of the context of the dialogue will work the most effectively. However, it has been challenging for computer systems to retrieve the appropriate advertisement from among the many options presented in large databases. Our proposed system, the Conversational Context-sensitive Advertisement generator (CoCoA), is the first attempt to apply masked word prediction to web information retrieval that takes into account the dialogue context. The novelty of CoCoA is that advertisers simply need to prepare a few abstract phrases, called Core-Queries, and then CoCoA automatically generates a context-sensitive expression as a complete search query by utilizing a masked word prediction technique that adds a word related to the dialogue context to one of the prepared Core-Queries. This automatic generation frees the advertisers from having to come up with context-sensitive phrases to attract users’ attention. Another unique point is that the modified Core-Query offers users speaking in front of the CoCoA system a list of context-sensitive advertisements. CoCoA was evaluated by crowd workers regarding the context-sensitivity of the generated search queries against the dialogue text of multiple domains prepared in advance. The results indicated that CoCoA could present more contextual and practical advertisements than other web-retrieval systems. Moreover, CoCoA acquired a higher evaluation in a particular conversation that included many travel topics to which the Core-Queries were designated, implying that it succeeded in adapting the Core-Queries for the specific ongoing context better than the compared method without any effort on the part of the advertisers. In addition, case studies with users and advertisers revealed that the context-sensitive advertisements generated by CoCoA also had an effect on the content of the ongoing dialogue. Specifically, since pairs unfamiliar with each other more frequently referred to the advertisement CoCoA displayed, the advertisements had an effect on the topics about which the pairs spoke. Moreover, participants of an advertiser role recognized that some of the search queries generated by CoCoA fitted the context of a conversation and that CoCoA improved the effect of the advertisement. In particular, they assimilated the hang of designing a good Core-Query at ease by observing the users’ response to the advertisements retrieved with the generated search queries.

会话上下文敏感广告生成与一些核心查询
当人们在数字标牌前交谈时,了解对话背景的广告将最有效地发挥作用。然而,对于计算机系统来说,从大型数据库中提供的众多选项中检索适当的广告一直是一项挑战。我们提出的会话上下文敏感广告生成器(conversation context -sensitive advertising generator, CoCoA)是首次尝试将掩码词预测应用于考虑对话上下文的web信息检索。CoCoA的新颖之处在于,广告商只需要准备几个抽象短语(称为核心查询),然后CoCoA利用掩码词预测技术(将与对话上下文相关的单词添加到一个准备好的核心查询中),自动生成一个上下文敏感的表达式作为完整的搜索查询。这种自动生成功能使广告商不必为了吸引用户的注意力而想出与上下文相关的短语。另一个独特之处在于,修改后的Core-Query为在CoCoA系统前发言的用户提供了一个上下文敏感的广告列表。CoCoA是由人群工作人员根据预先准备的多个域的对话文本对生成的搜索查询的上下文敏感性进行评估的。结果表明,与其他网络检索系统相比,CoCoA可以提供更多的情境性和实用性广告。此外,在包含许多指定的核心查询的旅游主题的特定对话中,CoCoA获得了更高的评价,这意味着它比比较的方法更成功地使核心查询适应特定的持续上下文,而无需广告商的任何努力。此外,对用户和广告商的案例研究表明,由CoCoA生成的上下文敏感广告也对正在进行的对话的内容产生影响。具体来说,由于彼此不熟悉的配对更频繁地提到CoCoA展示的广告,广告对配对谈论的话题有影响。此外,广告角色的参与者认识到,由CoCoA生成的一些搜索查询符合对话的上下文,并且CoCoA提高了广告的效果。特别是,他们通过观察用户对生成的搜索查询检索到的广告的反应,轻松地吸收了设计一个好的核心查询的诀窍。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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