Using Fundamental Analysis and an Ensemble of Classifier Models Along with a Risk-Off Filter to Select Outperforming Companies Using Fundamental Analysis and an Ensemble of Classifier Models Along with a Risk-Off Filter to Select Outperforming Companies
Synthesis Lectures on Technology, Management, & Entrepreneurship

Using Fundamental Analysis and an Ensemble of Classifier Models Along with a Risk-Off Filter to Select Outperforming Companies

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    • €119.99

Publisher Description

This book developes a quantitative stock market investment methodology using financial indicators that beats the benchmark of S&P500 index. To achieve this goal, an ensemble of machine learning models is meticulously constructed, incorporating four distinct algorithms: support vector machine, k-nearest neighbors, random forest, and logistic regression. These models all make use of financial ratios extracted from company financial statements for the purposes of predictive forecasting. The ensemble classifier is subject to a strict testing of precision which compares it to the performance of its constituent models separately. Rolling window and cross-validation tests are used in this evaluation in order to provide a comprehensive assessment framework. A risk-off filter is developed to limit risk during uncertain market periods, and consequently to improve the Sharpe ratio of the model. The risk adjusted performance of the final model, supported by the risk-off filter, achieves a Sharpe ratio of 1.63 which surpasses both the model’s performance without the filter that delivers Sharpe ratio of 1.41 and the one from the S&P500 index of 0.80. The substantial increase in risk-adjusted returns is accomplished by reducing the model’s volatility from an annual standard of deviation of 15.75% to 11.22%, which represents an almost 30% decrease in volatility.

In particular, this book shows the following features:


Implementation of an ensemble of machine learning classifiers that forecasts which stocks will beat the market.
Implementing a Risk-off filter that indicates high market risks.
Study the precision of the ensemble method classifier and compare it to each of the algorithms that compose it.

GENRE
Computing & Internet
RELEASED
2024
18 June
LANGUAGE
EN
English
LENGTH
82
Pages
PUBLISHER
Springer Nature Switzerland
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
8.2
MB
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