Identifying Social Network Delusion to Investigate Addiction Ratio using Data Mining

K. Thakre, Deepali Dawande, Vaidehi S. Thakre
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Abstract

Mining social media is the process of defining, analyzing, and extracting applicative patterns and trends from row social media data. Social media are very popular way of expressing opinions and interacting with many individual in the online world. However growing number of social network delusion among various age categories are recently noted. Mental sickness can have a deep influence on person, families, and society as well. Hence, we propose a framework that analyzes Social Network Delusion (SND) and investigates the addiction ratio. This work first defines the framework for analyzing the social network delusion based on mining online social behavior that provides an early stage opportunity to identify SNDs (Social Network Delusion). The proposed system mainly works in three phases. Feature extraction and analysis of the various posts posted by the users on Facebook, Instagram and Twitter is performed by using mining algorithm in the first step. The SND prediction using the extracted features is done in the second phase; Third phase uses the predicted results as an input for investigating the addiction ratio. We investigate the addiction ratio among different genders and age groups for analyzing the prevention strategies against growing number of SND.
利用数据挖掘识别社交网络错觉以调查成瘾率
挖掘社交媒体是指从社交媒体数据中定义、分析和提取应用模式和趋势的过程。社交媒体是一种非常流行的表达观点和与网络世界中许多人互动的方式。但是,最近在各年龄层中出现了越来越多的社交网络妄想症。精神疾病会对个人、家庭和社会产生深远的影响。因此,我们提出了一个分析社交网络妄想(SND)并调查成瘾比率的框架。这项工作首先定义了分析社交网络妄想的框架,该框架基于挖掘在线社交行为,为识别SNDs(社交网络妄想)提供了早期机会。本系统主要分为三个阶段。第一步使用挖掘算法对用户在Facebook、Instagram和Twitter上发布的各种帖子进行特征提取和分析。在第二阶段使用提取的特征进行SND预测;第三阶段使用预测结果作为调查成瘾比率的输入。我们调查了不同性别和年龄组的成瘾比例,以分析针对日益增长的SND的预防策略。
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