Combating trade in illegal wood and forest products with machine learning.

Trade in wood and forest products spans the global supply chain. Illegal logging and associated trade in forest products present a persistent threat to vulnerable ecosystems and communities. Illegal timber trade has been linked to violations of tax and conservation laws, as well as broader transnati...

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Main Authors: Debanjan Datta, John C Simeone, Amelia Meadows, Willow Outhwaite, Hin Keong Chen, Nathan Self, Linda Walker, Naren Ramakrishnan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0311982
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author Debanjan Datta
John C Simeone
Amelia Meadows
Willow Outhwaite
Hin Keong Chen
Nathan Self
Linda Walker
Naren Ramakrishnan
author_facet Debanjan Datta
John C Simeone
Amelia Meadows
Willow Outhwaite
Hin Keong Chen
Nathan Self
Linda Walker
Naren Ramakrishnan
author_sort Debanjan Datta
collection DOAJ
description Trade in wood and forest products spans the global supply chain. Illegal logging and associated trade in forest products present a persistent threat to vulnerable ecosystems and communities. Illegal timber trade has been linked to violations of tax and conservation laws, as well as broader transnational crimes. The United States is the largest importer globally of wood and forest products, such as pulp, paper, flooring, and furniture-importing $78 billion in 2021. Transaction-level data such as shipping container manifests and bills of lading provide a comprehensive data source that can be used to detect and disrupt trade that may be suspected of containing illegally harvested or traded forest products. Owing to the volume, velocity, and complexity of shipment data, an automated decision support system is required for the purposes of detecting suspicious forest product shipments. We present a proof of concept framework using machine learning and big data approaches-combining domain expertise with automation-to achieve this objective. We formulated the underlying machine learning problem as an anomaly detection problem and collected and collated forest sector-specific domain knowledge to filter and target shipments of interest. In this work, we provide the overview of our framework, with the details of domain knowledge extraction and machine learning models, and discuss initial results and analysis of flagged anomalous and potentially suspicious records to demonstrate the efficacy of this approach. The proof of concept work presented here provides the groundwork for an actionable and feasible approach to assisting enforcement agencies with the detection of suspicious shipments that may contain illegally harvested or traded wood.
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spelling doaj-art-69d9ebcaf9104080ad37da07a3d9c6032025-08-20T03:52:28ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01201e031198210.1371/journal.pone.0311982Combating trade in illegal wood and forest products with machine learning.Debanjan DattaJohn C SimeoneAmelia MeadowsWillow OuthwaiteHin Keong ChenNathan SelfLinda WalkerNaren RamakrishnanTrade in wood and forest products spans the global supply chain. Illegal logging and associated trade in forest products present a persistent threat to vulnerable ecosystems and communities. Illegal timber trade has been linked to violations of tax and conservation laws, as well as broader transnational crimes. The United States is the largest importer globally of wood and forest products, such as pulp, paper, flooring, and furniture-importing $78 billion in 2021. Transaction-level data such as shipping container manifests and bills of lading provide a comprehensive data source that can be used to detect and disrupt trade that may be suspected of containing illegally harvested or traded forest products. Owing to the volume, velocity, and complexity of shipment data, an automated decision support system is required for the purposes of detecting suspicious forest product shipments. We present a proof of concept framework using machine learning and big data approaches-combining domain expertise with automation-to achieve this objective. We formulated the underlying machine learning problem as an anomaly detection problem and collected and collated forest sector-specific domain knowledge to filter and target shipments of interest. In this work, we provide the overview of our framework, with the details of domain knowledge extraction and machine learning models, and discuss initial results and analysis of flagged anomalous and potentially suspicious records to demonstrate the efficacy of this approach. The proof of concept work presented here provides the groundwork for an actionable and feasible approach to assisting enforcement agencies with the detection of suspicious shipments that may contain illegally harvested or traded wood.https://doi.org/10.1371/journal.pone.0311982
spellingShingle Debanjan Datta
John C Simeone
Amelia Meadows
Willow Outhwaite
Hin Keong Chen
Nathan Self
Linda Walker
Naren Ramakrishnan
Combating trade in illegal wood and forest products with machine learning.
PLoS ONE
title Combating trade in illegal wood and forest products with machine learning.
title_full Combating trade in illegal wood and forest products with machine learning.
title_fullStr Combating trade in illegal wood and forest products with machine learning.
title_full_unstemmed Combating trade in illegal wood and forest products with machine learning.
title_short Combating trade in illegal wood and forest products with machine learning.
title_sort combating trade in illegal wood and forest products with machine learning
url https://doi.org/10.1371/journal.pone.0311982
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