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Articles ( Showing 1-20 of 137 items)
Searched for: [ Keywords: "Survival Machine Learning Models" ] clear all
Journal Article
Machine Learning Survival Models restrictions: the case of startups time to failed with collinearity-related issues
by Diego Vallarino
Abstract
This research evaluates the efficacy of survival models in forecasting startup failures and investigates their economic implications. Several machine learning survival models, including Kernel SVM, DeepSurv, Survival Random Forest, and MTLR, are assessed using the concordance index (C-index) as a measure of prediction accuracy. The findings reveal that more sophisticated models [...] Read more

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

Review
Unravelling the application of machine learning in cancer biomarker discovery
by Carter William , Choki Wangmo  and  Anjali Ranjan
Abstract
Machine learning is playing an increasingly important role in the healthcare industry by transforming the way cancer is diagnosed and treated. By analyzing patient data, genomic data, and imaging data, machine learning algorithms can identify molecular signatures that distinguish cancer patients from healthy patients. Biomarkers that can accurately detect and diagnose cancer ca [...] Read more

Journal Article
Portfolio Allocation with Medical Expenditure Risk-A Life Cycle Model and Machine Learning Analysis
by You Du  and  Weige Huang
Abstract
This paper explores how the medical expenditure risk affects the households’ portfolio choice across health status theoretically in a life cycle model and empirically using machine learning methods. Medical expenditure risk, as a background risk, has the potential to influence households’ financial decisions. A higher medical expenditure risk leads to a larger fluct [...] Read more

Journal Article
Temporal Dynamics of Countries' Journey to Cluster-Specific GDP per Capita: A Comprehensive Survival Study
by Diego Vallarino
Abstract
This research delves into the temporal dynamics of a nation's pursuit of a targeted GDP per capita level, employing five different survival machine learning models, remarkably Deep Learning algorithm (DeepSurv) and Survival Random Forest. This nuanced perspective moves beyond static evaluations, providing a comprehensive understanding of the developmental processes shaping econ [...] 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

Letter
Progress, Evolving Paradigms and Recent Trends in Economic Analysis
by Robertas Damasevicius
Abstract
This paper provides a thorough review of the shifting landscape of economic analysis, spotlighting recent trends and predicting future paths. While traditional economic models remain key for interpreting economic activity, they are being supplemented by fresh methods and cross-disciplinary viewpoints. The increased attention to inequality studies, using advanced statistical tec [...] Read more

Review
Exploring Longitudinal MRI-Based Deep Learning Analysis in Parkinson’s Patients - A Short Survey Focus on Handedness
by Yuan Gu , Ziyang Wang , Yuli Wang , Yishu Gong  and  Chen Li
Abstract
Parkinson’s Disease (PD) is a prevalent progressive neurodegenerative condition affecting millions globally. Research has found that individuals with PD have a reduced risk of certain cancers, such as colon, lung, and rectal cancers, but an increased risk of brain cancer. Therefore, there is an urgent need for the development of advanced PD diagnostic methods and for inve [...] Read more

Journal Article
Performance evaluation of user value in digital economy industry: Based on the improvement EVA model
by Nannan Zhou , Changluan Shao , Yongqing Chen  and  Huaming Liu
Abstract
With the advancement of science and technology and the advent of the digital economy, the digital economy has become a new driving force for economic development, and the digital economy industry at home and abroad is facing new opportunities for survival and development. However, due to the special development model and profit mode of the digital economy industry, the traditio [...] Read more

Journal Article
Cloud computing and extensive margins of exports: Evidence for manufacturing firms from 27 EU countries
by Joachim Wagner
Abstract
The use of cloud computing by firms can be expected to go hand in hand with higher productivity, more innovations, and lower costs, and, therefore, should be positively related to export activities. Empirical evidence on the link between cloud computing and exports, however, is missing. This paper uses firm level data for manufacturing enterprises from the 27 member countries o [...] Read more

Journal Article
Regional Economic Development in the AI Era: Methods, Opportunities, and Challenges
by Robertas Damaševičius
Abstract
The dawn of the Artificial Intelligence (AI) era presents a plethora of new possibilities for analyzing regional economic development. The present article provides an in-depth exploration of the methods employed in this field, highlighting the immense opportunities that AI offers while also addressing potential challenges. The role of AI is crucial in complex data handling, ena [...] Read more

Journal Article
Determinants of terrorism in the MENA region: a Bayesian Model Averaging based approach
by Zohra Aroussi , Mekki Hamdaoui  and  Mounir Smida
Abstract
In this work we aim to identify potential determinants and seek to predict terrorism attack. Thus, to eliminate uncertainty linked to explanatory variables we used the BMA method. We show that, contrary to expectations terrorism in MENA region is no longer purely of economic origin but mainly due to political problems, education, financial development and countries’ demog [...] Read more
Hit Affiliation:
Higher Institute of Informatics and Management of Kairouan (ISIGK), Modeling, Financing and Economic Development (MOFID-LR21ES28), University of Kairouan, Kairouan, Tunisia

Journal Article
Correlation between the immune microenvironment and bladder cancer based on a prognostic miRNA risk model
by Kun Mei , Zilu Chen , Le Huang , Joyce Wang  and  Yong Wei
Abstract
Background: Bladder cancer (BLCA), particularly invasive BLCA, has become a medical burden worldwide as it is associated with recurrence and easy metastasis. There are specific differences in the expression of various miRNAs in tumor and normal tissues. Hence, miRNAs can be used as biomarkers for tumor diagnosis and prognostic evaluation. The current study aimed to predict the [...] Read more

Journal Article
The Impact of Automobile Purchase Restriction on Urban Air Quality: Experimental Evidence from Beijing, China
by Fengyu Cheng , Jianping Liao , Kenichiro Soyano  and  Feiling Lu
Abstract
It's critical for environmental governance to understand the effectiveness of policy interventions as well as their working mechanisms. This paper focuses on the vehicle license plate-based management, a sort of policy intervention understudied in environmental governance literature. Specifically, we study the automobile purchase restriction (APR), a major method of license man [...] Read more

Journal Article
A prognostic aging-related lncRNA risk model correlates with the immune microenvironment in HCC
by Kun Mei , Zilu Chen , Qin Wang , Akbar Ali , Yan Huang  and  Luo Yi
Abstract
Background: Hepatocellular carcinoma (HCC) stands out as one of the most lethal cancers globally, given its complexity, recurrence following surgical resection, metastatic potential, and inherent heterogeneity. In recent years, researchers have systematically elucidated the significance of long non-coding RNA (lncRNA) in the initiation and progression of HCC. The intr [...] Read more

Journal Article
LTBP1 promotes the progression of triple negative breast cancer via activating the RhoA/ROCK signaling pathway
by Jingcheng Zhang , Hong Deng  and  Jun Wang
Abstract
The latent transforming growth factor-beta (TGF-β) binding protein 1 (LTBP1) has been implicated in various cellular processes, but its role in triple-negative breast cancer (TNBC) remains unclear. In this study, we investigated the impact of LTBP1 on TNBC progression and its underlying mechanisms. Analysis of online datasets revealed elevated LTBP1 mRNA expression in brea [...] Read more

Journal Article
Rethinking Education in the Age of AI: The Importance of Developing Durable Skills in the Industry 4.0
by James Hutson  and  Jason Ceballos
Abstract
This article discusses the pressing need to integrate artificial intelligence (AI) into education to facilitate customizable, individualized, and on-demand learning pathways. At the same time, while AI has the potential to expand the learner base and improve learning outcomes, the development of NACE Competencies and durable skills – communication, critical thinking, crea [...] Read more

Journal Article
An overlapping generations version of Krugman’s world’s smallest macroeconomic model and fiscal deficit
by Yasuhito Tanaka
Abstract
This paper attempts to introduce an overlapping generations structure into Paul Krugman's "The world's smallest macroeconomic model" (Krugman (1999)) to examine the implications of fiscal policy, particularly fiscal deficits, in a framework suitable for policy analysis. In that paper, Krugman argued that under the price rigidity assumption, a shortage in the money supply leads [...] Read more

Journal Article
Vector Error Correction Models with Stationary and Nonstationary Variables
by Pu Chen
Abstract
Vector Error Correction Models (VECM) have become a standard tool in empirical economics for analyzing nonstationary time series data because they integrate two key concepts in economics: equilibrium and dynamic adjustment in a single model. The current standard VECM procedure is limited to time series data with the same degree of integration, i.e., all I(1) variables. However, [...] Read more

Letter
Government deficit and “The World’s smallest macroeconomic model” by Paul Krugman
by Yasuhito Tanaka
Abstract
In his "The World’s smallest macroeconomic model” (Krugman (1999)), Paul Krugman argued that under the assumption of price rigidity, a shortage of money supply leads to underemployment or recession, so increasing money supply can eliminate underemployment and restore full employment. But, how do we increase the money supply? I will show that we need a government def [...] Read more