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We have trained a few supervised learning algorithms to predict if an individual will subscribe to a new Netflix service that is less expensive but contains advertisements. This allows reaching out to populations that don’t watch traditional television anymore. The test set target data and the corresponding predictions of three algorithms (random forest, neural network, k-nearest neighbors) are given in supervised_learning_computing_errors.xlsx. Given that the performance metric is accuracy as measured by the percentage of correct predictions, which is your preferred algorithm?