通过诗人的眼睛:社交媒体上视觉输入的古典诗歌推荐

D. Zhang, Bo Ni, Qiyu Zhi, Thomas Plummer, Qi Li, Hao Zheng, Qingkai Zeng, Yang Zhang, Dong Wang
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引用次数: 9

摘要

随着带摄像头的便携式设备(如智能手机和平板电脑)的日益普及以及无处不在的互联网连接,旅行者可以通过在社交媒体平台上发布他们拍摄的照片来分享他们在旅行中的即时体验。在本文中,我们提出了一种新的图像驱动的诗歌推荐系统,该系统将旅行者的照片作为输入,并推荐古典诗歌,这些古典诗歌可以通过诗歌中的美学引用来丰富照片。解决这一新问题存在三个关键挑战:1)如何提取诗歌和图像中隐含的意境?ii)如何在不知道创作者意图的情况下识别图像中的突出物体?iii)如何适应不同的用户形象感知,进行多元化的诗歌推荐?本文提出的iPoemRec系统通过发展异构信息网络和神经嵌入技术,共同解决了上述挑战。来自真实世界数据集和用户研究的评估结果表明,与最先进的基线相比,我们的系统可以为给定的照片推荐高度相关的古典诗歌,并获得显着更高的用户评分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Through The Eyes of A Poet: Classical Poetry Recommendation with Visual Input on Social Media
With the increasing popularity of portable devices with cameras (e.g., smartphones and tablets) and ubiquitous Internet connectivity, travelers can share their instant experience during the travel by posting photos they took to social media platforms. In this paper, we present a new image-driven poetry recommender system that takes a traveler's photo as input and recommends classical poems that can enrich the photo with aesthetically pleasing quotes from the poems. Three critical challenges exist to solve this new problem: i) how to extract the implicit artistic conception embedded in both poems and images? ii) How to identify the salient objects in the image without knowing the creator's intent? iii) How to accommodate the diverse user perceptions of the image and make a diversified poetry recommendation? The proposed iPoemRec system jointly addresses the above challenges by developing heterogeneous information network and neural embedding techniques. Evaluation results from real-world datasets and a user study demonstrate that our system can recommend highly relevant classical poems for a given photo and receive significantly higher user ratings compared to the state-of-the-art baselines.
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