| Dr Nathan Eagle is a Visiting
Scientist at the MIT Media Lab, where he recently completed his PhD under
Professor Alex (Sandy) Pentland. Professor Pentland is the Toshiba Professor
of Media Arts and Sciences at the MIT Media Laboratory and Director of
the Human Dynamics research group. Their research focuses on projects
that span a variety of disciplines from appropriate technology to artificial
intelligence. This contribution to receiver comes from Eagle's
dissertation on machine perception and learning of complex social systems,
which explores the intersections of mobile phones, machine learning, and
organizational behavior. |
Today's mobile phones are capable
of sensing the world around them. Using information such as cell tower IDs
or proximate Bluetooth devices, it is possible to get a depiction of an
individual's current context. When this data is captured over extended periods
of time, it can be used to generate a predictive model of the user's life.
And if we extend this further, capturing mobile phone data across the individuals
within an organization can give us unprecedented insight into the large-scale
dynamics of collective human behavior. Furthermore, a dataset providing
the proximity patterns and relationships within large groups of people has
implications within the computational epidemiology communities, and may
help build more accurate models of airborne pathogen dissemination, as well
as other more innocuous contagions, such as the flow of information around
the water cooler.
In the Reality Mining project, we distributed 100 context-logging phones
to people working at MIT and collected almost 500,000 hours of continuous
human behavioral data. We showed that Bluetooth-enabled mobile phones can
be used to discover a great deal about the user's context and relationships.
In this paper we will focus on extending this base of user modeling to explore
modeling complex social systems. We will provide several illustrative examples
of how this data can be used to learn more about both team and organizational
dynamics.
Team dynamics
By continuously scanning for Bluetooth devices and logging the people proximate
to an individual, we are able to quantify a variety of properties about
the individual's work group. Although most research in networks assumes
a static topology, proximity network data is extremely dynamic and sparse.
We will compare aggregate statistics between two different research groups
at the Media Lab in an attempt to gain insight into fundamental characteristics
of the research groups themselves.
While each research group at the Media Lab is centralized around a faculty
director, the proximity networks are not reflective of this static organizational
structure. In many instances, the proximity network's degree of distribution
is indicative of a hub-and-spoke formation, however the roles that are played
within this structure are not static. Individuals that are hubs during one
period of time fluidly exchange places with other team members on the periphery
of the proximity network. This type of dynamic may be characteristic of
the underlying nature of research groups at the Media Lab. As deadlines
approach for specific individuals, they begin to spend more time in the
Media Lab and increasingly rely on support from the rest of the group. Upon
completion of a project, they resume their normal routines and can provide
similar support to others. This pattern of behavior has been shown to vanish
when the entire group (or organization) is working towards the same deadline. |