This paper describes a Naive Bayesian predictive model for 2016 U.S. Presidential Election based on Twitter data. We use 33,708 tweets gathered since December 16, 2015 until February 29, 2016. We propose a simple way for data preprocessing which can still achieve 95.8% accuracy on predicting sentiments. The predicted sentiments are used to forecast the U.S. Republican and Democratic parties candidacies. The forecast is compared to the poll collected from RealClearPolitics.com with 26.7% accuracy. However, the true forecasting capacity of the method still have to be observed after the election process come to conclusion
Measuring and forecasting opinion trends from real-time social media is a long-standing goal of big-...
Nowadays social media like Twitter and Facebook etc. is one of the key players. Twitters are micro b...
Twitter is a microblogging service that has more than 500 million messages on a daily basis. Scholar...
This paper describes a Naive Bayesian predictive model for 2016 U.S. Presidential Election based on ...
Part 4: Social Media and Web 3.0 for SmartnessInternational audienceThe aim of this paper is to make...
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 ...
Nowadays, data of social media websites are getting more and more popular to be used as one of the m...
Social media users often make explicit predictions about upcoming events. Such statements vary in th...
Context. Social media platforms such as Facebook and Twitter carry a big load of people’s opinions a...
In 2016 Donald Trump stunned the nation and not a single pollster predicted the outcome. For the las...
Social network/media has become popular over the last few years and is moving closer to be an integr...
The avalanche of personal and social data circulating in Online Social Networks over the past 10 yea...
Several studies have shown how to approximately predict public opinion, such as in political electio...
Measuring and forecasting opinion trends from real-time social media is a long-standing goal of big-...
Nowadays social media like Twitter and Facebook etc. is one of the key players. Twitters are micro b...
Twitter is a microblogging service that has more than 500 million messages on a daily basis. Scholar...
This paper describes a Naive Bayesian predictive model for 2016 U.S. Presidential Election based on ...
Part 4: Social Media and Web 3.0 for SmartnessInternational audienceThe aim of this paper is to make...
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 ...
Nowadays, data of social media websites are getting more and more popular to be used as one of the m...
Social media users often make explicit predictions about upcoming events. Such statements vary in th...
Context. Social media platforms such as Facebook and Twitter carry a big load of people’s opinions a...
In 2016 Donald Trump stunned the nation and not a single pollster predicted the outcome. For the las...
Social network/media has become popular over the last few years and is moving closer to be an integr...
The avalanche of personal and social data circulating in Online Social Networks over the past 10 yea...
Several studies have shown how to approximately predict public opinion, such as in political electio...
Measuring and forecasting opinion trends from real-time social media is a long-standing goal of big-...
Nowadays social media like Twitter and Facebook etc. is one of the key players. Twitters are micro b...
Twitter is a microblogging service that has more than 500 million messages on a daily basis. Scholar...