Angeela Acharya

Angeela Acharya
George Mason University | GMU · Department of Computer Science

PhD in Computer Science

About

8
Publications
360
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19
Citations
Introduction
I am currently pursuing my Ph.D. degree in computer science at George Mason University. I am deeply passionate about the field of machine learning, with a primary focus on leveraging this technology for the betterment of society, often referred to as 'Machine Learning for Social Good.' A substantial portion of my research revolves around the analysis of sequential data, encompassing both textual information and time series data.

Publications

Publications (8)
Chapter
Full-text available
Crime and violence have always imposed significant societal threats across the world. Understanding the underlying causes behind them and making early predictions can help mitigate such occurrences to some extent. We propose a hierarchical attention-based mechanism that utilizes the temporal nature of event incidents obtained from news articles to...
Preprint
Full-text available
Individual-level data (microdata) that characterizes a population, is essential for studying many real-world problems. However, acquiring such data is not straightforward due to cost and privacy constraints, and access is often limited to aggregated data (macro data) sources. In this study, we examine synthetic data generation as a tool to extrapol...
Article
Objective The use of electronic health records (EHRs) for clinical risk prediction is on the rise. However, in many practical settings, the limited availability of task-specific EHR data can restrict the application of standard machine learning pipelines. In this study, we investigate the potential of leveraging language models (LMs) as a means to...
Article
Full-text available
The utilization of Electronic Health Records (EHRs) for clinical risk prediction is on the rise. However, strict privacy regulations limit access to comprehensive health records, making it challenging to apply standard machine learning algorithms in practical real-world scenarios. Previous research has addressed this data limitation by incorporatin...
Article
Despite the effectiveness of medication-assisted treatment (MAT), adults receiving MAT experience opioid cravings and engage in non-opioid illicit substance use that increases the risk of relapse and overdose. The current study examines whether negative urgency, defined as the tendency to act impulsively in response to intense negative emotion, is...
Article
Full-text available
Opioid overdoses within the United States continue to rise and have been negatively impacting the social and economic status of the country. In order to effectively allocate resources and identify policy solutions to reduce the number of overdoses, it is important to understand the geographical differences in opioid overdose rates and their causes....
Conference Paper
Full-text available
Individual-level data (microdata) that characterizes a population, is essential for studying many real-world problems. However, acquiring such data is not straightforward due to cost and privacy constraints, and access is often limited to aggregated data (macro data) sources. In this study, we examine synthetic data generation as a tool to extrapol...
Preprint
Full-text available
Opioid overdoses within the United States continue to rise and have been negatively impacting the social and economic status of the country. In order to effectively allocate resources and identify policy solutions to reduce the number of overdoses, it is important to understand the geographical differences in opioid overdose rates and their causes....

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