Instructions: The submitted report must present work and outputs clearly separated by Question. Submit ONLY ONE zip file named LASTNAME.zip that includes pdf file, code, html, data and any other supporting or working files. Python notebook with auxiliary output (data, plots) is not an analytical report: such submission will receive a deduction.Please do not discuss this assignment in groups or messengers. Raise a support ticket for your queries.Only clarifying questions are allowed.Introduction: Short-term asset return is a challenging quantity to predict. Efficient markets produce near-Normal daily returns with no significant correlation between rt, rt−1. This exam is a limited exercise in supervised learning. You are expected to explore multiple features or may use a set of features from Table 1 without an expectation of predictive powers. Original and final selected features should be sufficiently large.Your objective is to produce a model to predict positive moves (up trend) using machine learning models as specified in the below section. Your proposed solution should be comprehensive with the detailed feature engineering and model architecture.Devise your own approach on how to categorise extremely small near-zero returns (drop from training sample, group with positive/negative). The threshold will strongly depend on your ticker. Example: small positive returns below 0.25% can be labelled as negative.1Table 1: Features ListNumber of features to include is a design choice. There is no one recommended set of features for all assets. Length of dataset is another design choice. If predicting short-term return sign (for daily move), then training and testing over up to 5-year period should be sufficient. Making sense of instructions below is part of the task: the tutor will not assist in designing your computational implementation.Note: Choice of kernels and number of hyperparameters to be optimized for the best model are design choices.∗∗∗2
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