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    zollman-bandit

    by toni-akintola

    View on GithubCode in Colab

    Zollman Bandit Model

    A bandit model by Kevin Zollman, which depicts how highly connected scientific networks can come to consensus quicker - but may be less accurate than more sparsely connected community. View the full paper here.

    Abstract

    Increasingly, epistemologists are becoming interested in social struc- tures and their effect on epistemic enterprises, but little attention has been paid to the proper distribution of experimental results among scientists. This paper will analyze a model first suggested by two economists, which nicely captures one type of learning situation faced by scientists. The results of a computer simulation study of this model provide two interesting conclusions. First, in some contexts, a com- munity of scientists is, as a whole, more reliable when its members are less aware of their colleagues’ experimental results. Second, there is a robust trade-off between the reliability of a community and the speed with which it reaches a correct conclusion.

    Model Details

    Parameters include

    • Size of network
    • Objective probability of B
    • Objective probability of A
    • Network structure: complete, cycle, wheel

    Set Parameters

    Model Variation

    MAX TIMESTEPS

    A Objective 2008

    B Objective 2008

    Convergence Data Key

    Convergence Std Dev

    Graph Type

    Max Prior Value 2008

    Max Prior Value 2010

    Num Nodes

    Num Trials Per Step 2008

    Num Trials Per Step 2010

    True Probs 2010

    Run Timesteps

    Current Timestep: 0