Through the Citizen Scientists' Eyes : Insights into Using Citizen Science with Machine Learning for Effective Identification of Unknown-Unknowns in Big Data

Mantha, Kameswara Bharadwaj and Roberts, Hayley and Fortson, Lucy and Lintott, Chris and Dickinson, Hugh and Keel, William and Sankar, Ramanakumar and Krawczyk, Coleman and Simmons, Brooke and Walmsley, Mike and Garland, Izzy and Makechemu, Jason Shingirai and Trouille, Laura and Johnson, Clifford (2024) Through the Citizen Scientists' Eyes : Insights into Using Citizen Science with Machine Learning for Effective Identification of Unknown-Unknowns in Big Data. Citizen Science: Theory and Practice, 9 (1): 40. ISSN 2057-4991

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Abstract

In the era of rapidly growing astronomical data, the gap between data collection and analysis is a significant barrier, especially for teams searching for rare scientific objects. Although machine learning (ML) can quickly parse large data sets, it struggles to robustly identify scientifically interesting objects, a task at which humans excel. Human-in-the-loop (HITL) strategies that combine the strengths of citizen science (CS) and ML offer a promising solution, but first, we need to better understand the relationship between human- and machine-identified samples. In this work, we present a case study from the Galaxy Zoo: Weird & Wonderful project, where volunteers inspected ~200,000 astronomical images—processed by an ML-based anomaly detection model—to identify those with unusual or interesting characteristics. Volunteer-selected images with common astrophysical characteristics had higher consensus, while rarer or more complex ones had lower consensus. This suggests low-consensus choices shouldn’t be dismissed in further explorations. Additionally, volunteers were better at filtering out uninteresting anomalies, such as image artifacts, which the machine struggled with. We also found that a higher ML-generated anomaly score that indicates images’ low-level feature anomalousness was a better predictor of the volunteers’ consensus choice. Combining a locus of high volunteer-consensus images within the ML learnt feature space and anomaly score, we demonstrated a decision boundary that can effectively isolate images with unusual and potentially scientifically interesting characteristics. Using this case study, we lay important guidelines for future research studies looking to adapt and operationalize human-machine collaborative frameworks for efficient anomaly detection in big data.

Item Type:
Journal Article
Journal or Publication Title:
Citizen Science: Theory and Practice
ID Code:
226501
Deposited By:
Deposited On:
18 Dec 2024 09:45
Refereed?:
Yes
Published?:
Published
Last Modified:
19 Dec 2024 01:25