According to the CAPM, which statement is true regarding Alpha and Beta for a typical stock drawn at random from the market portfolio in upward trending market?
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Consider kNN, linear regression (LR), and Decision tree (DT)…
Consider kNN, linear regression (LR), and Decision tree (DT) learning (using correlation for splitting). Which option correctly lists the methods from fastest to slowest in query time?
In CAPM, when returns are based primarily on an upward gener…
In CAPM, when returns are based primarily on an upward general market, this is called?
According to the CAPM, which statement is true regarding Alp…
According to the CAPM, which statement is true regarding Alpha and Beta for a typical stock drawn at random from the market portfolio in an downward tranding market?
Consider kNN, linear regression (LR), Decision tree (DT) (us…
Consider kNN, linear regression (LR), Decision tree (DT) (using correlation for splitting), and Random tree. Which model has the fastest training time?
Consider two decision trees trained on the exact same data….
Consider two decision trees trained on the exact same data. DT was trained using correlation for splitting, RT was trained using splits determined randomly. Both trees were trained with leaf_size = 1. Which option below correctly describes (in order): The slowest to train, the slowest to query, the highest accuracy on in-sample data?
Suppose you have historical stock price data with data missi…
Suppose you have historical stock price data with data missing on some days in history (the values are NaN). You still want to use the data in backtesting and calculation of technical factors. Which of the following options are recommended (in the book)?
Consider overfitting when using DTLearner and a polynomial p…
Consider overfitting when using DTLearner and a polynomial parametric model. When overfitting occurs with these two methods, in which “direction” does it occur?
Consider two decision trees trained on the exact same data….
Consider two decision trees trained on the exact same data. DT was trained using correlation for splitting, RT was trained using splits determined randomly. Both trees were trained with leaf_size = 1. Which option below correctly describes (in order): The fastest to train, the fastest to query, the highest accuracy on in-sample data?
Suppose you have historical stock price data with data missi…
Suppose you have historical stock price data with data missing on some days in history (the values are NaN). You still want to use the data in backtesting and calculation of technical factors. Which of the following options are recommended (in the book)?