Everyday more than half of American adult internet users read or write
email messages at least once. The prevalence of email has significantly
impacted the working world, functioning as a great asset on many levels,
yet at times, a costly liability. In an effort to improve various
aspects of work-related communication, this work applies sophisticated
machine learning techniques to a large body of email data. Several
effective models are proposed that can aid with the prioritization of
incoming messages, help with coordination of shared tasks, improve
tracking of deadlines, and prevent disastrous information leaks.
Carvalho presents many data-driven techniques that can positively impact
work-related email communication and offers robust models that may be
successfully applied to future machine learning tasks.