Topic Identification in Social Networks has become an important task when dealing with event detection, particularly when global communities are affected. In order to attack this problem, text processing techniques and machine learning algorithms have been extensively used. In this paper we compare four clustering algorithms – k-means, k-medoids, DBSCAN and NMF (Non-negative Matrix Factorization) – in order to detect topics related to textual messages obtained from Twitter. The algorithms were applied to a database initially composed by tweets having hashtags related to the recent Nepal earthquake as initial context. Obtained results suggest that the NMF clustering algorithm presents superior results, providing simpler clusters that are als...
We first estimate the number of Italian users active on Twitter in the last year by filtering the It...
Extracting the latent knowledge from Twitter by applying spatial clustering on geotagged tweets prov...
Extracting the latent knowledge from Twitter by applying spatial clustering on geotagged tweets prov...
Topic Identification in Social Networks has become an important task when dealing with event detecti...
Topic Identification in Social Networks has become an important task when dealing with event detecti...
Among the various social media platforms that dominate the internet today, Twitter has established i...
Cluster analysis is a field of data analysis that extracts underlying patterns in data. One applicat...
Twitter is one of the most popular microblogging services in the world. The great amount of informat...
Purpose The purpose of this paper is to propose a framework for intelligent analysis of Twitter dat...
Twitter, currently the leading microblogging social network, has attracted a great body of research ...
Twitter, a microblogging online social network (OSN), has quickly gained prominence as it provides p...
In this thesis, we seek to find suitable methods for detecting news on Twitter within the fields of ...
In this paper we face the problem of intelligently analyze Twitter data. We propose a novel workflow ...
In this paper we face the problem of intelligently analyze Twitter data. We propose a novel workflow ...
We first estimate the number of Italian users active on Twitter in the last year by filtering the It...
We first estimate the number of Italian users active on Twitter in the last year by filtering the It...
Extracting the latent knowledge from Twitter by applying spatial clustering on geotagged tweets prov...
Extracting the latent knowledge from Twitter by applying spatial clustering on geotagged tweets prov...
Topic Identification in Social Networks has become an important task when dealing with event detecti...
Topic Identification in Social Networks has become an important task when dealing with event detecti...
Among the various social media platforms that dominate the internet today, Twitter has established i...
Cluster analysis is a field of data analysis that extracts underlying patterns in data. One applicat...
Twitter is one of the most popular microblogging services in the world. The great amount of informat...
Purpose The purpose of this paper is to propose a framework for intelligent analysis of Twitter dat...
Twitter, currently the leading microblogging social network, has attracted a great body of research ...
Twitter, a microblogging online social network (OSN), has quickly gained prominence as it provides p...
In this thesis, we seek to find suitable methods for detecting news on Twitter within the fields of ...
In this paper we face the problem of intelligently analyze Twitter data. We propose a novel workflow ...
In this paper we face the problem of intelligently analyze Twitter data. We propose a novel workflow ...
We first estimate the number of Italian users active on Twitter in the last year by filtering the It...
We first estimate the number of Italian users active on Twitter in the last year by filtering the It...
Extracting the latent knowledge from Twitter by applying spatial clustering on geotagged tweets prov...
Extracting the latent knowledge from Twitter by applying spatial clustering on geotagged tweets prov...