Density-based Multimodal Spatial Clustering using Pre-trained Deep Network for Extracting Local Topics

Tatsuhiro Sakai, Keiichi Tamura, H. Kitakami, T. Takezawa
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Abstract

Users on social networking services (SNSs) have been transmitting information about events they witnessed themselves in their daily life through geo-social data as geo-tagged texts and photos. Geo-social data are usually related to not only personal topics but also local topics and events. Therefore, extracting local topics and events in geo-social data is one of the most important challenges in many application domains. In this study, to extract local topics in geo-social data, we propose a new method based on a density-based multimodal spatial clustering algorithm called the (ϵ, σ)-density-based multimodal spatial clustering, which can extract multimodal spatial clusters that are spatially and semantically separated from other spatial clusters. Moreover, to present the main topics of each multimodal spatial cluster, representative photos are detected using network-based importance analysis. The proposed method utilizes a pre-trained deep network for extracting feature vectors of photos, and feature vectors are utilized to calculate the similarity between two geo-social data. To evaluate our new local topic extraction method, we conducted experiments using actual geo-tagged tweets that include photos. The experimental results show that the proposed method can extract local topics as multimodal spatial clusters more sensitively than our previous method.
基于密度的多模态空间聚类——基于预训练深度网络的局部主题提取
社交网络服务(sns)的用户一直在通过地理社交数据(如地理标记文本和照片)传输他们在日常生活中目睹的事件的信息。地理社会数据通常不仅与个人话题有关,还与当地话题和事件有关。因此,从地理社会数据中提取本地主题和事件是许多应用领域中最重要的挑战之一。为了提取地理社会数据中的局部主题,我们提出了一种基于密度的多模态空间聚类算法(λ, σ)-密度的多模态空间聚类方法,该方法可以提取在空间和语义上与其他空间簇分离的多模态空间簇。此外,为了呈现每个多模态空间集群的主题,使用基于网络的重要性分析来检测代表性照片。该方法利用预训练的深度网络提取照片的特征向量,并利用特征向量计算两个地理社会数据之间的相似度。为了评估我们新的本地主题提取方法,我们使用包含照片的实际地理标记推文进行了实验。实验结果表明,该方法能够较灵敏地将局部主题提取为多模态空间聚类。
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