6 research outputs found
Signed bounded confidence models for opinion dynamics
The aim of this paper is to modify continuous-time bounded confidence opinion dynamics models so
that ‘‘changes of opinion’’ (intended as changes of the sign of the initial states) are never induced during
the evolution. Such sign invariance can be achieved by letting opinions of different sign localized near the
origin interact negatively, or neglect each other, or even repel each other. In all cases, it is possible to obtain
sign-preserving bounded confidence models with state-dependent connectivity and with a clustering
behavior similar to that of a standard bounded confidence model
Reasoning about quantities and concepts: studies in social learning
We live and learn in a ‘society of mind’. This means that we form beliefs not
just based on our own observations and prior expectations but also based on the
communications from other people, such as our social network peers. Across seven
experiments, I study how people combine their own private observations with other
people’s communications to form and update beliefs about the environment. I will
follow the tradition of rational analysis and benchmark human learning against optimal Bayesian inference at Marr’s computational level. To accommodate human
resource constraints and cognitive biases, I will further contrast human learning
with a variety of process level accounts. In Chapters 2–4, I examine how people
reason about simple environmental quantities. I will focus on the effect of dependent information sources on the success of group and individual learning across a
series of single-player and multi-player judgement tasks. Overall, the results from
Chapters 2–4 highlight the nuances of real social network dynamics and provide
insights into the conditions under which we can expect collective success versus
failures such as the formation of inaccurate worldviews. In Chapter 5, I develop a
more complex social learning task which goes beyond estimation of environmental
quantities and focuses on inductive inference with symbolic concepts. Here, I investigate how people search compositional theory spaces to form and adapt their
beliefs, and how symbolic belief adaptation interfaces with individual and social
learning in a challenging active learning task. Results from Chapter 5 suggest that
people might explore compositional theory spaces using local incremental search;
and that it is difficult for people to use another person’s learning data to improve
upon their hypothesis
Advances in Computational Social Science and Social Simulation
Aquesta conferència és la celebració conjunta de la "10th Artificial Economics Conference AE", la "10th Conference of the European Social Simulation Association ESSA" i la "1st Simulating the Past to Understand Human History SPUHH".Conferència organitzada pel Laboratory for SocioÂ-Historical Dynamics Simulation (LSDS-ÂUAB) de la Universitat Autònoma de Barcelona.Readers will find results of recent research on computational social science and social simulation economics, management, sociology,and history written by leading experts in the field. SOCIAL SIMULATION (former ESSA) conferences constitute annual events which serve as an international platform for the exchange of ideas and discussion of cutting edge research in the field of social simulations, both from the theoretical as well as applied perspective, and the 2014 edition benefits from the cross-fertilization of three different research communities into one single event. The volume consists of 122 articles, corresponding to most of the contributions to the conferences, in three different formats: short abstracts (presentation of work-in-progress research), posters (presentation of models and results), and full papers (presentation of social simulation research including results and discussion). The compilation is completed with indexing lists to help finding articles by title, author and thematic content. We are convinced that this book will serve interested readers as a useful compendium which presents in a nutshell the most recent advances at the frontiers of computational social sciences and social simulation researc