Ace Vo, Ph.D.

Associate Professor of Information Systems and Business Analytics, College of Business Administration

  • Los Angeles CA UNITED STATES

Contact

Biography

You can contact Ace Vo at ace.vo@lmu.edu.

The expertise of Ace Vo includes data mining, spatial analytics, and big data machine learning, especially in the healthcare informatics domain. With a transdisciplinary approach to his work, he continually seeks ways to integrate and augment different domains’ strengths in order to bridge the gap between practice and theory and solve the most pressing problems. Professor Vo joined LMU in fall 2019. He previously taught at San Francisco State University. His research has been featured in several premier journals in information systems such as Decision Support Systems, Information Systems Frontiers, and Journal of Computer Information Systems. He has consulted and worked in various fields, including online advertising, manufacturing, hospitality, and healthcare. In addition, he holds several well-regarded professional certifications, one of which is the Project Management Professional (PMP®) and the Amazon Web Services (AWS) Solution Architect.

Education

Claremont Graduate University

Ph.D.

Information Systems and Technology

2017

California State University, Fullerton

M.S.

Information Systems

2012

University of Arizona

B.S.

Information Systems and Business Management

2008

Social

Areas of Expertise

Big Data Machine Learning
Data Mining
Spatial Analytics

Articles

Title: The Association Between Social Determinants of Health and Population Health Outcomes: Ecological Analysis

JMIR Public Health and Surveillance Journal

2023-03-29

This study aimed to investigate the ecological association between SDOH factors and population health outcomes at the census tract level and the city level. The findings of this study can be applied to support local policy makers in efforts to improve population health, enhance the quality of care, and reduce health inequity.

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A Taxonomy for Risk Assessment of Cyberattacks on Critical Infrastructure (TRACI)

Communications of the AIS

2023-01-01

Cybercrime against critical infrastructure such as nuclear reactors, power plants, and dams has been increasing in frequency and severity. Recent literature regarding these types of attacks has been extensive but due to the sensitive nature of this field, there is very little empirical data. We address these issues by integrating Routine Activity Theory and Rational Choice Theory, and we create a classification tool called TRACI (Taxonomy for Risk Assessment of Cyberattacks on Critical Infrastructure). We take a Design Science Research approach to develop, evaluate, and refine the proposed artifact. We use mix methods to demonstrate that our taxonomy can successfully capture the characteristics of various cyberattacks against critical infrastructure. TRACI consists of three dimensions, and each dimension contains its own subdimensions. The first dimension comprises of hacker motivation, which can be financial, socio-cultural, thrill-seeking, and/or economic. The second dimension represents the assets such as cyber, physical, and/or cyber-physical components. The third dimension is related to threats, vulnerabilities, and controls that are fundamental to establishing and maintaining an information security posture and overall cyber resilience. Our work is among the first to utilize criminological theories and Design Science to create an empirically validated artifact for improving critical infrastructure risk management.

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Showcase: A Data-Driven Dashboard for Federal Criminal Sentencing

Journal of the AIS

2022-12-16

The main purpose of the Sentencing Reform Act of 1984 was to provide more uniformity in sentencing and reduce inter-judge disparity. Subsequently, the Act created the federal sentencing guidelines to offer judges a possible sentencing range for offenses. However, since these recommendations were based on historical data, the guidelines amplified existing biases and increased inequality and disproportionate sentencing of minorities. To address this problem, we developed an artifact called “ShowCase”—a data-driven dashboard—that is grounded in penal theory, organizational context theory, social bonds theory, and triangulation notion in design theory. The artifact helps judges make fairer and more objective decisions by integrating a variety of data points. We used a design science research methodology and mixed methods to guide the development and evaluation of the proposed dashboard. Our research inquiry revealed what legal and extralegal factors contribute to more equitable judicial decisions. We also found support for integrating data science and more diverse viewpoints in the sentencing process. Our study shows that a validated data-driven dashboard can be used to promote fairness, objectivity, and transparency in the criminal justice system.

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