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Jiawei Li
Jiawei Li
Master of Computational Science, University of California San Diego
Verified email at s-3.io
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Cited by
Cited by
Year
Data mining and content analysis of the Chinese social media platform Weibo during the early COVID-19 outbreak: retrospective observational infoveillance study
J Li, Q Xu, R Cuomo, V Purushothaman, T Mackey
JMIR Public Health and Surveillance 6 (2), e18700, 2020
1832020
Machine learning to detect self-reporting of symptoms, testing access, and recovery associated with COVID-19 on Twitter: retrospective big data infoveillance study
T Mackey, V Purushothaman, J Li, N Shah, M Nali, C Bardier, B Liang, ...
JMIR public health and surveillance 6 (2), e19509, 2020
1532020
Big data, natural language processing, and deep learning to detect and characterize illicit COVID-19 product sales: Infoveillance study on Twitter and Instagram
TK Mackey, J Li, V Purushothaman, M Nali, N Shah, C Bardier, M Cai, ...
JMIR public health and surveillance 6 (3), e20794, 2020
1032020
A machine learning approach for the detection and characterization of illicit drug dealers on instagram: model evaluation study
J Li, Q Xu, N Shah, TK Mackey
Journal of medical Internet research 21 (6), e13803, 2019
812019
Characterizing twitter user topics and communication network dynamics of the “Liberate” movement during COVID-19 using unsupervised machine learning and social network analysis
MR Haupt, A Jinich-Diamant, J Li, M Nali, TK Mackey
Online Social Networks and Media 21, 100114, 2021
612021
Application of unsupervised machine learning to identify and characterise hydroxychloroquine misinformation on Twitter
TK Mackey, V Purushothaman, M Haupt, MC Nali, J Li
The Lancet Digital Health 3 (2), e72-e75, 2021
392021
Use of machine learning to detect wildlife product promotion and sales on Twitter
Q Xu, J Li, M Cai, TK Mackey
Frontiers in big Data 2, 28, 2019
392019
An unsupervised machine learning approach for the detection and characterization of illicit drug-dealing comments and interactions on Instagram
N Shah, J Li, TK Mackey
Substance Abuse 43 (1), 273-277, 2022
192022
Sub-national longitudinal and geospatial analysis of COVID-19 tweets
RE Cuomo, V Purushothaman, J Li, M Cai, TK Mackey
Plos one 15 (10), e0241330, 2020
182020
Identification and characterization of tweets related to the 2015 Indiana HIV outbreak: A retrospective infoveillance study
M Cai, N Shah, J Li, WH Chen, RE Cuomo, N Obradovich, TK Mackey
PloS one 15 (8), e0235150, 2020
162020
Applying topic modelling and qualitative content analysis to identify and characterise ENDS product promotion and sales on Instagram
N Shah, M Nali, C Bardier, J Li, J Maroulis, R Cuomo, TK Mackey
Tobacco Control, 2021
132021
Detection of self-reported experiences with corruption on twitter using unsupervised machine learning
J Li, WH Chen, Q Xu, N Shah, JC Kohler, TK Mackey
Social Sciences & Humanities Open 2 (1), 100060, 2020
132020
Leveraging big data to identify corruption as an SDG goal 16 humanitarian technology
J Li, WH Chen, Q Xu, N Shah, T Mackey
2019 IEEE Global Humanitarian Technology Conference (GHTC), 1-4, 2019
112019
Evaluation of Hybrid Unsupervised and Supervised Machine Learning Approach to Detect Self-Reporting of COVID-19 Symptoms on Twitter
M Cai, J Li, M Nali, TK Mackey
2021 IEEE International Conference on Communications Workshops (ICC …, 2021
62021
Detecting suicide and self-harm discussions among opioid substance users on Instagram using machine learning
V Purushothaman, J Li, TK Mackey
Frontiers in psychiatry 12, 551296, 2021
52021
Characterizing alternative and emerging tobacco product transition of use behavior on Twitter
C Bardier, JS Yang, J Li, TK Mackey
BMC Research Notes 14 (1), 1-10, 2021
22021
Detection of health sector corruption-related self-reports on twitter using unsupervised machine learning
J Li, T Mackey, WH Chen, Q Xu, N Shah, J Kohler
APHA's 2020 VIRTUAL Annual Meeting and Expo (Oct. 24-28), 2020
2020
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Articles 1–17