Phyllis Illari

h-index12
2papers

2 Papers

CLJan 30, 2025
Mining for Species, Locations, Habitats, and Ecosystems from Scientific Papers in Invasion Biology: A Large-Scale Exploratory Study with Large Language Models

Jennifer D'Souza, Zachary Laubach, Tarek Al Mustafa et al.

This paper presents an exploratory study that harnesses the capabilities of large language models (LLMs) to mine key ecological entities from invasion biology literature. Specifically, we focus on extracting species names, their locations, associated habitats, and ecosystems, information that is critical for understanding species spread, predicting future invasions, and informing conservation efforts. Traditional text mining approaches often struggle with the complexity of ecological terminology and the subtle linguistic patterns found in these texts. By applying general-purpose LLMs without domain-specific fine-tuning, we uncover both the promise and limitations of using these models for ecological entity extraction. In doing so, this study lays the groundwork for more advanced, automated knowledge extraction tools that can aid researchers and practitioners in understanding and managing biological invasions.

CYMar 24, 2019
Review of human decision-making during computer security incident analysis

Jonathan M. Spring, Phyllis Illari

We review practical advice on decision-making during computer security incident response. Scope includes standards from the IETF, ISO, FIRST, and the US intelligence community. To focus on human decision-making, the scope is the evidence collection, analysis, and reporting phases of response. The results indicate both strengths and gaps. A strength is available advice on how to accomplish many specific tasks. However, there is little guidance on how to prioritize tasks in limited time or how to interpret, generalize, and convincingly report results. Future work should focus on these gaps in explication and specification of decision-making during incident analysis.