Measuring and forecasting opinion trends from real-time social media is a long-standing goal of bigdata analytics. Despite the large amount of work addressing this question, there has been no clear validation of online social media opinion trend with traditional surveys. Here we develop a method to infer the opinion of Twitter users by using a combination of statistical physics of complex networks and machine learning based on hashtags co-occurrence to build an in-domain training set of the order of a million tweets. We validate our method in the context of 2016 US Presidential Election by comparing the Twitter opinion trend with the New York Times National Polling Average, representing an aggregate of hundreds of independent traditional po...
Several studies have shown how to approximately predict public opinion, such as in political electio...
In this article, we examine the relationship between metrics documenting politics-related Twitter ac...
In this article, we examine the relationship between metrics documenting politics-related Twitter ac...
Measuring and forecasting opinion trends from real-time social media is a long-standing goal of bigd...
Finding the extent of measurable benefits of social media on political outcomes is not easy. My pape...
Abstract—Twitter as a new form of social media potentially contains useful information that opens ne...
Opinion polls play an important role in modern democratic processes: they are known to not only affe...
Twitter, as one of the popular social networks today and big data generator, can affect and change t...
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 ...
There has been much interest in using social media to track public opinion. We introduce a higher le...
The 2016 Presidential Election revealed the diminishing accuracy of traditional polling methods as e...
The correlation between Twitter sentiments and polling results for the 2016 presidential race / Dev...
In this thesis, the author examines the last 131 days of the 2016 election cycle. This analysis focu...
In 2016 Donald Trump stunned the nation and not a single pollster predicted the outcome. For the las...
Several studies have shown how to approximately predict public opinion, such as in political electio...
In this article, we examine the relationship between metrics documenting politics-related Twitter ac...
In this article, we examine the relationship between metrics documenting politics-related Twitter ac...
Measuring and forecasting opinion trends from real-time social media is a long-standing goal of bigd...
Finding the extent of measurable benefits of social media on political outcomes is not easy. My pape...
Abstract—Twitter as a new form of social media potentially contains useful information that opens ne...
Opinion polls play an important role in modern democratic processes: they are known to not only affe...
Twitter, as one of the popular social networks today and big data generator, can affect and change t...
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 ...
There has been much interest in using social media to track public opinion. We introduce a higher le...
The 2016 Presidential Election revealed the diminishing accuracy of traditional polling methods as e...
The correlation between Twitter sentiments and polling results for the 2016 presidential race / Dev...
In this thesis, the author examines the last 131 days of the 2016 election cycle. This analysis focu...
In 2016 Donald Trump stunned the nation and not a single pollster predicted the outcome. For the las...
Several studies have shown how to approximately predict public opinion, such as in political electio...
In this article, we examine the relationship between metrics documenting politics-related Twitter ac...
In this article, we examine the relationship between metrics documenting politics-related Twitter ac...