Comparison Training for a Rescheduling Problem in Neural Networks
–Neural Information Processing Systems
Many events such as flight delays or the absence of a member require the crew pool rescheduling team to change the initial schedule (rescheduling). In this paper, we show that the neural network comparison paradigm applied to the backgammon game by Tesauro (Tesauro and Se(cid:173) jnowski, 1989) can also be applied to the rescheduling problem of an aircrew pool. Indeed both problems correspond to choosing the best solut.ion The paper explains from a math(cid:173) ematical point of view the architecture and the learning strategy of the backpropagation neural network used for the best choice prob(cid:173) lem. We also show how the learning phase of the network can be accelerated.
Neural Information Processing Systems
Apr-6-2023, 18:57:41 GMT