使用 flutter 连接兴趣相投者的社交媒体应用程序

Aditya Prakash Sharma, Ritesh Gupta, Tanmay Kushwaha
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引用次数: 0

摘要

了解在线社交网络(OSN)中的兴趣相似性对各种应用至关重要。本研究解决了在 Facebook 等平台上确定兴趣相似性的难题,因为在这些平台上,用户可能不会明确披露自己的兴趣。研究利用了一个包含 479,048 个用户和 5,263,351 个用户生成兴趣的大量数据集,重点关注电影、音乐和电视节目。研究结果揭示了兴趣相似性的同质性,表明当个人拥有相似的人口信息或作为朋友联系在一起时,他们往往会分享更多相似的品味。本文提出了一个实用的预测模型,有助于选择具有高兴趣相似性的用户,并提高 OSN 应用的决策水平。此外,论文还介绍了一种使用标签网络连接具有相似兴趣用户的新方法,该方法优于传统方法,为在社交网络中连接志同道合者提供了一种更有效的手段。关键词:人脸图像合成 生成式对抗网络 人脸识别
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Media App for Connecting Similar Interests People Using flutter
Understanding interest similarity in Online Social Networks (OSNs) is crucial for various applications. This study addresses the challenge of determining interest similarity on platforms like Facebook, where users may not explicitly disclose their interests. Utilizing a substantial dataset of 479,048 users and 5,263,351 user-generated interests, the research focuses on movies, music, and TV shows. Findings reveal homophily in interest similarity, demonstrating that individuals tend to share more similar tastes when they have comparable demographic information or are connected as friends. A practical prediction model is proposed, facilitating the selection of users with high-interest similarities and enhancing decision-making for OSN applications. Additionally, the paper introduces a novel method using a tag network to connect users with similar interests, outperforming traditional methods by providing a more efficient means of connecting like-minded individuals in social networks. Key Word:Face image synthesis, Generative adversarial network, Face Recognition.
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