Welcome to my webpage!
I am an Associate Professor in Economics at
the University of Southampton (U.K.).
I do research mostly
in the area of Microeconomic Theory and, more recently, also
in Complexity Theory, Network Theory, Social Network Data
and their use in Public Health.
I am the Head of PGT
Programmes and I am in charge of the MSc in Economics,
the MSc in Finance and Economics, the MSc in Finance and
Econometrics and the MRes in Economics.
This project aims at repositioning
questions related to environment, behavior and public
health to the domain of social network platforms, such
as Twitter, by emphasizing the social, rather than just
clinical, dimension of life-style related
illnesses.
This is joint work with M. Brede,
E.
Mentzakis and T.
Wang and has received funding from IfLS,
the School
of Social Sciences, the Web
Science Institute and the ESRC-DTC.
User-generated
data on social media provides high-resolution records
of people' feelings, thoughts and behaviors to
understand complex mental disorders. Prior studies
either focus on content analysis without considering
relational interactions between individuals, or ignore
the multiplex and dynamic nature of social
interactions. Here, we explore the multiplexity and
the dynamics of interactions in online health
communities through a large set of Twitter
conversations between individuals who self-identified
as eating disordered. By modeling interpersonal
communication on different types of content through a
multilayer network, we show that (i) different types
of interactions have distinct network structures,
e.g., interactions on private content tend to take
place within small groups, and (ii) users play a
different role in different types of interactions,
e.g., hubs in exchanging pro-recovery content are less
likely to be hubs in exchanging anti-recovery content.
By measuring temporal characteristics of multilayer
networks built based on users' conversations in
different time periods, we further find that (i) the
diversity of users' interests in different types of
interactions decreases over time, and (ii)
anti-recovery communities have a smaller number of
hardcore members than other communities. Our findings
shed light on the organization and evolution of an
online health community.
This project looks at various aspects
of public opinion formation, voting behaviour and
campaign spending in a way that incorporates recent
behavioural findings into otherwise standard models.
Part of this work is joint with H. Marreiros and has received funding from the School of Social Sciences.
This projects studies different learning models, where individuals learn from their history (through reinforcement) or by observing the action taken by their peers (through social learning on a network).
Part of this work is joint with A.
Guarino and has received funding from the ESRC, from the EUI and from the Ca Foscari
University of Venice.
This project deploys ABM to understand endogenous
merging decisions in markets and the origins of money
as a medium of exchange.
Part of this work is joing with C. Zedan, T. Moran, M.
Brede, S.
Bullock and J. Noble and has received funding
from the DTC-
Complexity.
The benefits of money as a medium of exchange are
obvious,
but the historical origin of money is less clear. An
existing
economic model of monetary search is reproduced as an
agent based
simulation and an evolutionary algorithm is used to
model social learning. This approach captures the way
in which
different equilibria can arise, including solutions in
which one
or two goods come to be used as money. In the case
where
monetary goods have identical properties, multiple
equilibria
can be reached with a dependence on the starting
beliefs of
agents. In our analysis we also consider the
evolutionary
dynamics that allow for a small chance of mutations in
strategies. In some cases our findings show
evolutionary paths
by which use of particular monetary goods can
collapse.
All teaching material is available
via Blackboard.