AMA Team server

Machine learning: models & algorithms


"Data and Knowledge Processing at Large Scale" Axis  


Joint research team between CNRS, Grenoble INP, UJF, and UPMF


Dataset — Buzz in social media


FILES

OVERVIEW


This dataset contains two different social networks: Twitter, a micro-blogging platform with exponential growthand extremely fast dynamics, and Tom’s Hardware, a worldwide forum network focusing on new technology with more conservative dynamics but distinctive features. Tom’s Hardware (TH) and Twitter (TW) have very distinctive properties:


In this study, we focus on 6671 topics, such as: over-cloaking; grafikkarten; disque dur; android; etc. related to the technology domain. Here is a summary per language.



NB. Users Nb. Discussions Nb. Examples Nb. Topics

FR EN DE FR EN DE FR EN DE
(TH) 72·103 0 8·103 50·104 0 1·104 4879 0 3026 4957
(TW) 24·106 30·106 10·106 23·107 28·107 46·106 76292 35317 29089 6671


DATA FORMAT


This dataset is published using the UCI guidelines. Hence examples are stored using a standard comma separated value (CSV) format. You will find an example per line, and one feature per column. Each dataset is provided with an additional instructions file, as suggested by the UCI.


CLASSIFICATION TASK


In the classification task you will be provided with time-windows showing an upward trend. The objective of this task is to determine whether or not these time-windows are followed by buzz events. In this task:



REGRESSION TASK


As in the classification task you will be provided only with upward-windows. The value to be predicted will be the value of the time-series used to determine the popularity of a topic (Y, as presented before)