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Extracting Key Challenges in Achieving Sobriety Through Shared Subspace Learning

机译:通过共享子空间学习提取实现清醒的关键挑战

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Alcohol abuse is quite common among all people without any age restrictions. The uncontrolled use of alcohol affects both the individual and society. Alcohol addiction leads to a huge increase in crime, suicide, health related problems and financial crisis. Research has shown that certain behavioral changes can be effective towards staying abstained. The analysis of behavioral changes of quitters and those who are at the beginning phase of quitting can be useful for reducing the issues related to alcohol addiction. Most of the conventional approaches are based on surveys and, therefore, expensive in both time and cost. Social media has lend itself as a source of large, diverse and unbiased data for analyzing social behaviors. Reddit is a social media platform where a large number of people communicate with each other. It has many different sub-groups called subreddits categorized based on the subject. We collected more than 40,000 self reported user's data from a subreddit called '/r/stopdrinking'. We divide the data into two groups, short-term with abstinent days less than 30 and long-term abstainers with abstinent days greater than 365 based on badge days at the time of post submission. Common and discriminative topics are extracted from the data using JS-NMF, a shared subspace non-negative matrix factorization method. The validity of the extracted topics are demonstrated through predictive performance.
机译:没有年龄限制的所有人中,酗酒现象十分普遍。不受控制地使用酒精会影响个人和社会。酒精成瘾导致犯罪,自杀,健康相关问题和金融危机的急剧增加。研究表明,某些行为改变可能对保持弃权有效。分析戒烟者和处于戒烟初期的戒烟者的行为变化,对于减少与酒精成瘾有关的问题很有用。大多数常规方法是基于调查的,因此,在时间和成本上都是昂贵的。社交媒体可以作为分析社会行为的大量,多样且无偏见的数据的来源。 Reddit是一个社交媒体平台,许多人可以在此交流。它有许多不同的子类别,称为subreddits,是根据主题分类的。我们从一个名为“ / r / stopdrinking”的子索引中收集了40,000多个自我报告的用户数据。根据提交后的徽章天数,我们将数据分为两组,短期节假日少于30天,长期节假日少于365天。使用共享子空间非负矩阵分解方法JS-NMF从数据中提取常见和区分性主题。提取的主题的有效性通过预测性能得到证明。

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