Abstract
In social networks, users can easily share information and express their opinions. Given the huge amount of data posted by many users, it is difficult to search for relevant information. In addition to individual posts, it would be useful if we can recommend groups of people with similar interests. Past studies on user preference learning focused on single-modal features such as review contents or demographic information of users. However, such information is usually not easy to obtain in most social media without explicit user feedback. In this paper, we propose a multimodal feature fusion approach to implicit user preference prediction which combines text and image features from user posts for recommending similar users in social media. First, we use the convolutional neural network (CNN) and TextCNN models to extract image and text features, respectively. Then, these features are combined using early and late fusion methods as a representation of user preferences. Lastly, a list of users with the most similar preferences are recommended. The experimental results on real-world Instagram data show that the best performance can be achieved when we apply late fusion of individual classification results for images and texts, with the best average top-k accuracy of 0.491. This validates the effectiveness of utilizing deep learning methods for fusing multimodal features to represent social user preferences. Further investigation is needed to verify the performance in different types of social media.
Highlights
We propose a multimodal feature fusion approach to implicit user preference prediction by learning deep features from texts and images in user posts for recommending similar users in social media
We propose a feature fusion approach to implicit user preference learning
We propose a feature fusion approach to implicit user preference learnfrom user posts and related images for similar user recommendation
Summary
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. In popular online social networks such as Twitter, Facebook, and Instagram, it is easy for users to share information and post their opinions and comments. Given the huge amount of user-generated content (UGC), it is difficult to search for the most relevant information effectively. Since people tend to share information that interests them and comment on the topics they like, user posts and comments are likely to reflect their preferences. In addition to individual posts, it would be useful if we can recommend groups of people with similar interests. This might help users discover more relevant content in social media
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