Abstract:
In the digital era we are citizens in a global village connected through internet despite the
geographical boundaries. We use social media platforms to share our experiences and
thoughts with our friends, colleagues, or interest groups as it happens. At the same time, we
read statuses from others through these platforms.
Among social media platforms, Twitter is popular as a micro blogging platform to express
our opinion on almost anything that happens in the society. Twitter users generate short text
messages called ""tweets"" which is mostly text with a length up to 280 characters. Sharing
multimedia data like images, emoticons and video is also allowed in twitter. Some very
important meta data included in a tweet are author, contributor, tweet(text), followers count,
friends count, created time, favorite count, tweet ID, language, place/location, number of
retweets, Source and Source URL etc.
On the other hand, news media has been a source of information in any community which is
also a source that has an impact on the society provided that the news being confirmed by
multiple news sources.
A trend in social media is a topic that is subjected to a sudden burst in popularity among the
users. The reason behind this situation can be a certain event or a group of events that
happened in their surroundings. Or else a rumor for no specific reason. Due to the sudden
increase in popularity, there can be reflected in actions in social media such as retweeting of
tweet(s) related to a particular topic. Hence, it’s worth studying the social media activities to
identify trending topics from social media.
Some trends are triggered by public events or news broadcasts and cause high impact on the
society. On the other hand, some trends originate from social media and later cause impact on
the society. Identifying trends that originates from social media and predict the future impact
of it can be beneficial for various personnel in myriads of fields such as news analysts, social
media users, business organizations, government and so on.
In this research, a novel interdisciplinary approach based on trend analysis, natural language
processing and machine learning, has been developed to predict the social impact of the
topics identified from twitter data