揭开抑郁症的面纱分析社交媒体上的披露行为

J. D. Jadhav, Akanksha Ranpise, Divya Rane, Ridhima Bhat, Vaishnavi Shinde
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引用次数: 0

摘要

在当今这个快节奏的世界里,精神压力是一个令人担忧的重要问题,而在早期阶段发现并解决这个问题则极具挑战性。然而,基于网络的社交网络的兴起为解决这一问题提供了一个独特的机会。通过分析用户的压力状态与其社交互动之间的相关性,我们开发了一个系统来了解其中的动态变化。该系统使用从现实世界社交平台收集的数据集,对社交媒体帖子进行情感分析。通过这种分析,可以更深入地了解用户的情绪和心理状态,使系统能够对用户当前是否处于压力状态进行分类。一旦确定了用户的压力状态,系统就会主动采取措施提供支持。它在地图上提供附近医院的建议,确保用户在遇到困难时能在必要时获得及时援助。此外,管理员还会通过电子邮件向用户发送一份预防清单,提供指导和提示,以促进用户更健康、更快乐地生活。总之,该系统是数字时代检测和管理压力的综合方法。通过研究用户的压力状态与其社交互动之间的关系,该系统可以提供早期干预和支持。在日益互联的数字世界中,该系统有助于提高个人的整体幸福感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unmasking Depression: Analyzing Disclosure Behavior on Social Media
Mental stress is a significant concern in today's fast-paced world, and detecting and addressing it in its early stages is challenging. However, the rise of web-based social networks presents a unique opportunity to tackle this issue. By analyzing the correlation between users' stress states and their social interactions, a system is developed to understand the dynamics at play. The system uses a dataset gathered from real-world social platforms to analyze sentiment analysis on social media posts. This analysis allows for deeper insights into users' emotions and mental states, enabling the system to classify whether users are currently experiencing stress or not. Once a user's stress state is identified, the system takes proactive steps to offer support. It provides recommendations for nearby hospitals on a map, ensuring users in distress can access immediate assistance if necessary. Additionally, administrators send users a precautionary list via email, offering guidance and tips to promote healthier and happier lives. In conclusion, this system represents a holistic approach to addressing stress detection and management in the digital age. By examining the relationship between users' stress states and their social interactions, the system can provide early intervention and support. This system contributes to enhancing the overall well-being of individuals in an increasingly interconnected digital world.
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