Department of Computer Science, University of Maryland, College Park, USA.
Department of Electrical and Computer Engineering, University of Maryland, College Park, USA.
Sci Rep. 2024 May 8;14(1):10606. doi: 10.1038/s41598-024-60299-w.
Increasing use of social media has resulted in many detrimental effects in youth. With very little control over multimodal content consumed on these platforms and the false narratives conveyed by these multimodal social media postings, such platforms often impact the mental well-being of the users. To reduce these negative effects of multimodal social media content, an important step is to understand creators' intent behind sharing content and to educate their social network of this intent. Towards this goal, we propose INTENT-O-METER, a perceived human intent prediction model for multimodal (image and text) social media posts. INTENT-O-METER models ideas from psychology and cognitive modeling literature, in addition to using the visual and textual features for an improved perceived intent prediction model. INTENT-O-METER leverages Theory of Reasoned Action (TRA) factoring in (i) the creator's attitude towards sharing a post, and (ii) the social norm or perception towards the multimodal post in determining the creator's intention. We also introduce INTENTGRAM, a dataset of 55K social media posts scraped from public Instagram profiles. We compare INTENT-O-METER with state-of-the-art intent prediction approaches on four perceived intent prediction datasets, Intentonomy, MDID, MET-Meme, and INTENTGRAM. We observe that leveraging TRA in addition to visual and textual features-as opposed to using only the latter-results in improved prediction accuracy by up to in Top-1 accuracy and in AUC on INTENTGRAM. In summary, we also develop a web browser application mimicking a popular social media platform and show users social media content overlaid with these intent labels. From our analysis, around users confirmed that tagging posts with intent labels helped them become more aware of the content consumed, and they would be open to experimenting with filtering content based on these labels. However, more extensive user evaluation is required to understand how adding such perceived intent labels mitigate the negative effects of social media.
社交媒体的广泛使用给年轻人带来了许多负面影响。由于这些平台上的多模态内容几乎无法控制,而且这些多模态社交媒体帖子传达的虚假叙事,这些平台经常影响用户的心理健康。为了减少多模态社交媒体内容的负面影响,一个重要的步骤是了解创作者分享内容的意图,并向他们的社交网络宣传这种意图。为此,我们提出了 INTENT-O-METER,这是一种用于多模态(图像和文本)社交媒体帖子的感知人类意图预测模型。INTENT-O-METER 模型借鉴了心理学和认知建模文献的思想,除了使用视觉和文本特征外,还使用这些特征来改进感知意图预测模型。INTENT-O-METER 利用理性行动理论 (TRA) 来确定创作者的意图,其中包括 (i) 创作者对分享帖子的态度,以及 (ii) 对多模态帖子的社会规范或感知。我们还引入了 INTENTGRAM,这是一个从公共 Instagram 个人资料中提取的 55K 个社交媒体帖子数据集。我们在四个感知意图预测数据集(Intentonomy、MDID、MET-Meme 和 INTENTGRAM)上比较了 INTENT-O-METER 与最先进的意图预测方法。我们观察到,与仅使用后者相比,利用 TRA 以及视觉和文本特征可以将预测准确性提高多达 ,在 INTENTGRAM 上的 AUC 提高了 。总之,我们还开发了一个模仿流行社交媒体平台的网络浏览器应用程序,并向用户展示叠加了这些意图标签的社交媒体内容。从我们的分析中,约 用户确认,给帖子贴上意图标签有助于他们更清楚地了解所消费的内容,并且他们愿意尝试根据这些标签过滤内容。然而,需要进行更广泛的用户评估,以了解添加这些感知意图标签如何减轻社交媒体的负面影响。