Financial factors analysis for acquisition premium and anticipation using extreme gradient boosting and deep recurrent neural network
Abstract
This study shows importance hierarchy of financial factors of corporations’ Goodwill
and tries to foresee with popular machine learning and deep learning models. Financial engineering is using mathematical model to study financial behavior. Financial
engineers are hired by investment banks, commercial banks, hedge funds, insurance
companies, corporate treasuries, and regulatory agencies. It is vital for each of
them to asses a company’s sustainability before any sort of investment. However,
predicting sustainability is not deterministic. Therefore, corporate sustainability
has become a mainstream business goal for stakeholders. Whether Quantitative
finance impacts goodwill or has implicit insight can be a machine learning problem. Deep learning and machine learning are rapidly changing the financial services
industry. Business leaders can now transform vast amounts of financial data into
insightful predictions with the help of data science, creating significant savings in
the bottom line. This thesis is concerned with investigating financial factors of a
company’s Goodwill and also fits popular machine learning and deep learning models and evaluate goodness of fit. To aid the research, a comparison between the
proposed models-XGboost and Deep LSTM are conducted.