Evaluation of Machine Learning Methods on SPiCe
نویسندگان
چکیده
In this paper, we introduce methods that we used to solve problems from the sequence prediction competition called SPiCe. We train a model from sequences in train data on each problem, and then predict a next symbol following each sequence in test data. We implement several methods to solve these problems. The experiment results show that XGBoost and neural network approaches have good performance overall.
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