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Articles ( Showing 1-20 of 5 items)
Searched for: [ Keywords: "Machine learning" ] clear all
Journal Article
A Comparative Machine Learning Survival Models Analysis for Predicting Time to Bank Failure in the US (2001-2023)
by Diego Vallarino
Abstract
This study investigates the likelihood of time to bank failures in the US between 2001 and April 2023, based on data collected from the Federal Deposit Insurance Corporation's report on "Bank Failures in Brief - Summary 2001 through 2023". The dataset includes 564 instances of bank failures and several variables that may be related to the likelihood of such events, such as asse [...] Read more

Journal Article
Forecasting Parameters in the SABR Model
by Li Chen , Jianing Zhu  and  Cunyi Yang
Abstract
We present two approaches to forecasting parameters in the SABR model. The first approach is the vector autoregressive moving-average model (VARMA) for the time series of the in-sample calibrated parameters, and the second is based on machine learning techniques called epsilon-support vector regression (ε-SVR). Using daily data of S&P 500 ETF option prices from Janu [...] Read more

Journal Article
A Study of Hierarchical Risk Parity in Portfolio Construction
by Debjani Palit  and  Victor R. Prybutok
Abstract
The construction and optimization of a portfolio is a complex process that has been a historically active research area in finance. For portfolios with highly correlated assets, the performance of traditional risk-based asset allocations methods such as the mean-variance (MV) model is limited when numerous assets are correlated. A novel clustering-based asset allocation method, [...] Read more

Journal Article
An AI-Enhanced Forecasting Framework: Integrating LSTM and Transformer-Based Sentiment for Stock Price Prediction
by Diego Vallarino
Abstract
Forecasting stock prices remains a fundamental yet complex challenge in financial economics due to the nonlinearity, volatility, and exogenous shocks characterizing market behavior. This paper proposes a hybrid deep learning framework that integrates Long Short-Term Memory (LSTM) networks for time-series modeling with Transformer-based architectures for textual sentiment extrac [...] Read more

Journal Article
From degrees to dollars: Exploring the link between elite education and startup funding
by Alfredo Molinas
Abstract
Many startups look for venture capital (VC) funding to grow their business. Anecdotally, in the Southeast Asia context, startup founders who attended an elite institute of higher learning have greater access to this kind of capital, but this has not been demonstrated quantitatively. We look at a dataset of nearly 800 startups in Southeast Asia who have received VC funding in th [...] Read more