Description Usage Arguments Parameters Methods References See Also
Each time step t, LinUCBDisjointPolicy runs a linear regression per arm that produces coefficients
for each context feature d.
Next, LinUCBDisjointPolicy observes the new context, and generates a predicted payoff or reward
together with a confidence interval for each available arm. It then proceeds to choose the arm with the
highest upper confidence bound.
1 | policy <- LinUCBDisjointPolicy(alpha = 1.0)
|
alphadouble, a positive real value R+; Hyper-parameter adjusting the balance between exploration and exploitation.
namecharacter string specifying this policy. name
is, among others, saved to the History log and displayed in summaries and plots.
Ad*d identity matrix
ba zero vector of length d
new(alpha = 1) Generates a new LinUCBDisjointPolicy object. Arguments are defined
in the Argument section above.
set_parameters()each policy needs to assign the parameters it wants to keep track of
to list self$theta_to_arms that has to be defined in set_parameters()'s body.
The parameters defined here can later be accessed by arm index in the following way:
theta[[index_of_arm]]$parameter_name
get_action(context)here, a policy decides which arm to choose, based on the current values of its parameters and, potentially, the current context.
set_reward(reward, context)in set_reward(reward, context), a policy updates its parameter values
based on the reward received, and, potentially, the current context.
Li, L., Chu, W., Langford, J., & Schapire, R. E. (2010, April). A contextual-bandit approach to personalized news article recommendation. In Proceedings of the 19th international conference on World wide web (pp. 661-670). ACM.
Core contextual classes: Bandit, Policy, Simulator,
Agent, History, Plot
Bandit subclass examples: BasicBernoulliBandit, ContextualLogitBandit,
OfflineReplayEvaluatorBandit
Policy subclass examples: EpsilonGreedyPolicy, ContextualLinTSPolicy
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