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双渠道故事:人工智能推荐与用户订阅渠道的数字广告表现

Tales of Two Channels: Digital Advertising Performance Between AI Recommendation and User Subscription Channels

Journal of Marketing · 2023
被引 56
人大 AFT50UTD24ABS 4*

中文导读

研究对比了AI推荐和用户订阅两种内容分发渠道中信息流广告的表现,发现推荐渠道点击率更高但转化率更低,且广告侵入感起中介作用。

Abstract

Although in-feed advertising is popular on mainstream platforms, academic research on it is limited. Platforms typically deliver organic content through two methods: subscription by users or recommendation by artificial intelligence. However, little is known about the ad performance between these two channels. This research examines how the performance of in-feed ads, in terms of click-through rates and conversion rates, differs between subscription and recommendation channels and whether these effects are mediated by ad intrusiveness and moderated by ad attributes. Two ad attributes are investigated: ad appeal (informational vs. emotional) and ad link (direct vs. indirect). Study 1 finds that the recommendation channel generates higher click-through rates but lower conversion rates than the subscription channel, and these effects are amplified by informational ad appeal and direct ad links. Study 2 explores channel differences, revealing that the recommendation channel yields less source credibility and content control, reducing consumer engagement with organic content. Studies 3 and 4 validate the mediating role of ad intrusiveness and rule out ad recognition as an alternative explanation. Study 5 uses eye-tracking technology to show that the recommendation channel has lower content engagement, lower ad intrusiveness, and greater ad interest.

数字广告信息流广告推荐系统用户订阅广告效果