BiologyNature Communications
Early warning of trends in commercial wildlife trade through novel machine-learning analysis of patent filing
A. Hinsley, D. W. S. Challender, et al.
This groundbreaking study by A. Hinsley and colleagues unveils the unforeseen impact of unsustainable wildlife trade on innovation and market shifts. With a staggering 130% annual rise in patents related to endangered species from 1970 to 2020, it reveals how businesses are adapting with novel products and methods despite stricter regulations. Discover how this research leverages machine learning to provide essential insights for proactive wildlife trade management!
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Computer Science
Machine learning dismantling and early-warning signals of disintegration in complex systems
M. Grassia, M. D. Domenico, et al.
Linguistics and Languages
Stylistic and linguistic variations in compliments: an empirical analysis of children's gender schema development with machine learning algorithms
X. Liao and Y. Zhang
Computer Science
Using the interest theory of rights and Hohfeldian taxonomy to address a gap in machine learning methods for legal document analysis
A. Izzidien
The Arts
Identifying gender bias in blockbuster movies through the lens of machine learning
M. J. Haris, A. Upreti, et al.

