[arXiv] BigDataFr recommends: Distributed Real-Time Sentiment Analysis for Big Data Social Streams

real-time sentiment

BigDataFr recommends: Distributed Real-Time Sentiment Analysis for Big Data Social Streams

[…] ABSTRACT

Big data trend has enforced the data-centric systems to have continuous fast data streams. In recent years, real-time analytics on stream data has formed into a new research field, which aims to answer queries about what-is-happening-now with a negligible delay. The real challenge with real-time stream data processing is that it is impossible to store instances of data, and therefore online analytical algorithms are utilized. To perform real-time analytics, pre-processing of data should be performed in a way that only a short summary of stream is stored in main memory. In addition, due to high speed of arrival, average processing time for each instance of data should be in such a way that incoming instances are not lost without being captured. Lastly, the learner needs to provide high analytical accuracy measures. Sentinel is a distributed system written in Java that aims to solve this challenge by enforcing both the processing and learning process to be done in distributed form. Sentinel is built on top of Apache Storm, a distributed computing platform. […]

Read paper
By Amir Hossein Akhavan Rahnama
Source: arxiv.org

Laisser un commentaire