Part 4: Social Media and Web 3.0 for SmartnessInternational audienceThe aim of this paper is to make a zealous effort towards true prediction of the 2016 US Presidential Elections. We propose a novel technique to predict the outcome of US presidential elections using sentiment analysis. For this data was collected from a famous social networking website (SNW) Twitter in form of tweets within a period starting from September 1, 2016 to October 31, 2016. To accomplish this mammoth task of prediction, we build a model in WEKA 3.8 using support vector machine which is a supervised machine learning algorithm. Our results showed that Donald Trump was likely to emerge winner of 2016 US Presidential Elections
Nowadays social media like Twitter and Facebook etc. is one of the key players. Twitters are micro b...
This project entails a web-based interactive set of visualisations generated from advanced sentiment...
Compared with real-world polling, election prediction based on social media can be far more timely a...
This paper describes a Naive Bayesian predictive model for 2016 U.S. Presidential Election based on ...
Abstract—Twitter as a new form of social media potentially contains useful information that opens ne...
The traditional methods of polling are an expensive and time-consuming process. The amount of resour...
Data mining is a term that refers to extraction of knowledge or information hidden in large volumes ...
Context. Social media platforms such as Facebook and Twitter carry a big load of people’s opinions a...
Opinion polls play an important role in modern democratic processes: they are known to not only affe...
Nowadays, data of social media websites are getting more and more popular to be used as one of the m...
The avalanche of personal and social data circulating in Online Social Networks over the past 10 yea...
U.S. President Joe Biden took his oath after being victorious in the controversial U.S. elections of...
Abstract Big data encompasses social networking websites including Twitter as popular micro-blogging...
Under the leadership of Dr. Hayden Wimmer and Dr. Jeffrey Kaleta, this undergraduate senior Informat...
In this thesis, the author examines the last 131 days of the 2016 election cycle. This analysis focu...
Nowadays social media like Twitter and Facebook etc. is one of the key players. Twitters are micro b...
This project entails a web-based interactive set of visualisations generated from advanced sentiment...
Compared with real-world polling, election prediction based on social media can be far more timely a...
This paper describes a Naive Bayesian predictive model for 2016 U.S. Presidential Election based on ...
Abstract—Twitter as a new form of social media potentially contains useful information that opens ne...
The traditional methods of polling are an expensive and time-consuming process. The amount of resour...
Data mining is a term that refers to extraction of knowledge or information hidden in large volumes ...
Context. Social media platforms such as Facebook and Twitter carry a big load of people’s opinions a...
Opinion polls play an important role in modern democratic processes: they are known to not only affe...
Nowadays, data of social media websites are getting more and more popular to be used as one of the m...
The avalanche of personal and social data circulating in Online Social Networks over the past 10 yea...
U.S. President Joe Biden took his oath after being victorious in the controversial U.S. elections of...
Abstract Big data encompasses social networking websites including Twitter as popular micro-blogging...
Under the leadership of Dr. Hayden Wimmer and Dr. Jeffrey Kaleta, this undergraduate senior Informat...
In this thesis, the author examines the last 131 days of the 2016 election cycle. This analysis focu...
Nowadays social media like Twitter and Facebook etc. is one of the key players. Twitters are micro b...
This project entails a web-based interactive set of visualisations generated from advanced sentiment...
Compared with real-world polling, election prediction based on social media can be far more timely a...