Modeling Task Deviations as Eccentricity Distribution Peaks

  • Vagner Figueredo de Santana Santana
  • Rogério Abreu de Paula Paula
  • Claudio Santos Pinhanez Pinhanez

Resumo

Detailed usage data is becoming available through different devices (e.g., personal computer, cell phones, tablets, watches, glasses, wrist bands), in huge volumes, and in a speed that requires new models and visualizations to support the understanding of detailed user actions at scale. Without appropriate methods that summarize or provide means of analyzing large usage data sets, a semantic gap between the event-by-event data and the tasks profile remains. In this context, this work proposes a technique to support the analysis of task deviation from the examination of detailed user interface events streams. From the analysis of 427 event-by-event logged sessions (captured under user consent) of a technical reference website, this work presents how to identify task deviations by using eccentricity distribution. The proposed technique is a promising way of identifying task deviations in large log data sets containing information about how users performed real tasks.
Publicado
2018-03-28
Como Citar
SANTANA, Vagner Figueredo de Santana; PAULA, Rogério Abreu de Paula; PINHANEZ, Claudio Santos Pinhanez. Modeling Task Deviations as Eccentricity Distribution Peaks. Teste, [S.l.], mar. 2018. Disponível em: <http://143.54.25.88/index.php/teste/article/view/776>. Acesso em: 17 sep. 2024.
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