Unprecedented expansion of user generated content in recent years demands more attempts of information filtering in order to extract high quality information from the huge amount of available data. In particular, topic detection from microblog streams is the first step toward monitoring and summarizing social data. This task is challenging due to the short and noisy characteristics of microblog content. Moreover, the underlying models need to be able to deal with heterogeneous streams which contain multiple stories evolving simultaneously. In this work, we introduce a frequent pattern mining approach for topic detection from a microblog stream. This approach first uses a Maximal Sequence Mining (MSM) algorithm to extract pattern sequences, ...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Real-world events of general interest trigger engaging discussions among peoplefor short bursts in t...
Documents created and distributed on the Internet are ever changing in various forms. Most of existi...
This thesis presents a sequential pattern based model (PMM) to detect news topics from a popular mic...
Topic mining on microblogging sites with sheer scale of instance messages and social network informa...
Emerging topic detection from microblogs has developed into an attractive task because events usuall...
In this paper we present a novel method for clustering words in micro-blogs, based on the similarity...
The problem of clustering content in social media has pervasive appli-cations, including the identif...
Nowadays, microblogging has become popular, with hundreds of millions of short messages being posted...
AbstractMininghottopicsfrom twitter streamshas attractedalotof attentionin recent years.Traditionalh...
Over the last 40 years, automatic solutions to analyze text documents collection have been one of th...
Online Social Networks (OSNs), such as Twitter, offer attractive means of social interactions and co...
Abstract. Sequential pattern mining is an active field in the domain of knowledge discovery and has ...
© 1989-2012 IEEE. Microblogging platforms, such as Twitter, serve as an important and efficient chan...
Among the various social media platforms that dominate the internet today, Twitter has established i...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Real-world events of general interest trigger engaging discussions among peoplefor short bursts in t...
Documents created and distributed on the Internet are ever changing in various forms. Most of existi...
This thesis presents a sequential pattern based model (PMM) to detect news topics from a popular mic...
Topic mining on microblogging sites with sheer scale of instance messages and social network informa...
Emerging topic detection from microblogs has developed into an attractive task because events usuall...
In this paper we present a novel method for clustering words in micro-blogs, based on the similarity...
The problem of clustering content in social media has pervasive appli-cations, including the identif...
Nowadays, microblogging has become popular, with hundreds of millions of short messages being posted...
AbstractMininghottopicsfrom twitter streamshas attractedalotof attentionin recent years.Traditionalh...
Over the last 40 years, automatic solutions to analyze text documents collection have been one of th...
Online Social Networks (OSNs), such as Twitter, offer attractive means of social interactions and co...
Abstract. Sequential pattern mining is an active field in the domain of knowledge discovery and has ...
© 1989-2012 IEEE. Microblogging platforms, such as Twitter, serve as an important and efficient chan...
Among the various social media platforms that dominate the internet today, Twitter has established i...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Real-world events of general interest trigger engaging discussions among peoplefor short bursts in t...
Documents created and distributed on the Internet are ever changing in various forms. Most of existi...