rlsm: R package for least squares Monte Carlo

01/17/2018
by   Jeremy Yee, et al.
0

This short paper briefly describes the implementation of the least squares Monte Carlo method in the rlsm package. This package provides users with an easy manner to experiment with the large amount of R regression tools on any regression basis and reward functions. This package also computes lower and upper bounds for the true value function via duality methods.

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