Scholars often seek to understand topics discussed on Twitter using topic modelling approaches. Several coherence metrics have been proposed for evaluating the coherence of the topics generated by these approaches, including the pre-calculated Pointwise Mutual Information (PMI) of word pairs and the Latent Semantic Analysis (LSA) word representation vectors. As Twitter data contains abbreviations and a number of peculiarities (e.g. hashtags), it can be challenging to train effective PMI data or LSA word representation. Recently, Word Embedding (WE) has emerged as a particularly effective approach for capturing the similarity among words. Hence, in this paper, we propose new Word Embedding-based topic coherence metrics. To determine ...
In event detection and opinion mining on social media it is important to grasp the semantic meaning ...
While social media platforms such as Twitter can provide rich and up-to-date information for a wide ...
It has been shown that learning distributed word representations is highly useful for Twitter sentim...
Scholars often seek to understand topics discussed on Twitter using topic modelling approaches. Seve...
Twitter offers scholars new ways to understand the dynamics of public opinion and social discussion...
Topic modelling approaches help scholars to examine the topics discussed in a corpus. Due to the po...
Topic modelling approaches such as LDA, when applied on a tweet corpus, can often generate a topic m...
Twitter offers scholars new ways to understand the dynamics of public opinion and social discussion...
Topic modelling approaches help scholars to examine the topics discussed in a corpus. Due to the po...
Recently, political events, such as elections or referenda, have raised a lot of discussions on soci...
Topic modelling approaches such as LDA, when applied on a tweet corpus, can often generate a topic m...
The rise of social networks powered by the emergence of Web 2.0 unleashed a massive amount of gene...
halle.de Quantifying the coherence of a set of statements is a long standing problem with many poten...
There is a rising need for automated analysis of news text, and topic models have proven to be usefu...
In event detection and opinion mining on social media it is important to grasp the semantic meaning ...
In event detection and opinion mining on social media it is important to grasp the semantic meaning ...
While social media platforms such as Twitter can provide rich and up-to-date information for a wide ...
It has been shown that learning distributed word representations is highly useful for Twitter sentim...
Scholars often seek to understand topics discussed on Twitter using topic modelling approaches. Seve...
Twitter offers scholars new ways to understand the dynamics of public opinion and social discussion...
Topic modelling approaches help scholars to examine the topics discussed in a corpus. Due to the po...
Topic modelling approaches such as LDA, when applied on a tweet corpus, can often generate a topic m...
Twitter offers scholars new ways to understand the dynamics of public opinion and social discussion...
Topic modelling approaches help scholars to examine the topics discussed in a corpus. Due to the po...
Recently, political events, such as elections or referenda, have raised a lot of discussions on soci...
Topic modelling approaches such as LDA, when applied on a tweet corpus, can often generate a topic m...
The rise of social networks powered by the emergence of Web 2.0 unleashed a massive amount of gene...
halle.de Quantifying the coherence of a set of statements is a long standing problem with many poten...
There is a rising need for automated analysis of news text, and topic models have proven to be usefu...
In event detection and opinion mining on social media it is important to grasp the semantic meaning ...
In event detection and opinion mining on social media it is important to grasp the semantic meaning ...
While social media platforms such as Twitter can provide rich and up-to-date information for a wide ...
It has been shown that learning distributed word representations is highly useful for Twitter sentim...