Elisabete A. De Nadai Fernandes
Adv. Artif. Intell. Mach. Learn., 1 (1):1-11
1. Elisabete A. De Nadai Fernandes: Nuclear Energy Center for Agriculture, University of São Paulo, Avenida Centenário 303, 13416-000 Piracicaba, SP, Brazil.
DOI: 10.54364/AAIML.2021.1101
Article History: Received on: 10-May-21, Accepted on: 24-May-21, Published on: 31-May-21
Corresponding Author: Elisabete A. De Nadai Fernandes
Email: lis@cena.usp.br
Citation: Elisabete A. De Nadai Fernandes, Yuniel T. Mazola, Márcio A. Bacchi, Cláudio L. Gonzaga and Silvana R.V. Sarriés, Gabriel A. Sarriés, Peter Bode (2021). Discriminating Beef Producing Countries by Multi-Element Analysis and Machine Learning. Adv. Artif. Intell. Mach. Learn., 1 (1 ):1-11
The growing awareness of
the environmental impact of beef production is greatly influencing the
consumption decision. Beef production is strongly criticized due to the remarkable environmental
impact of this activity, associated with problems of deforestation, water
consumption, global warming, and climate change. Despite this, livestock
food products play an important role in food security, accounting for 33%
of global protein consumption. Enhancing the transparency of the beef
production chain is essential to increase consumer perception about its
origin, safety for consumption, environmental and human aspects. A study was
undertaken to assess if
beef samples from different producing countries can be distinguished from
another on basis of their contents of chemical elements. Beef samples from some
of the top world exporters, Brazil (1st), Australia (2nd), Argentina
(5th), Uruguay (8th), and Paraguay (9th), were analyzed by neutron
activation analysis for multi-element determination.
Five machine learning
algorithms, Classification and Regression Tree (CART),
Multilayer Perceptron (MLP), Naive Bayes (NB), Random Forest (RF), and
Sequential Minimal Optimization (SMO), were used to analyze the
measurement results and classify the beef producing countries. MLP model
provided the best classification performance, with an accuracy of 100%,
98%, 98%, 96%, and 82% respectively for Paraguay, Uruguay,
Australia, Argentina, and Brazil. Reducing the number of classes (each
country against the remaining countries), the accuracy achieved for the
Brazilian beef samples was improved to 94% without changing the
performance for other countries.Multi-element compositional data and machine
learning algorithms allowed for discriminating beef producing countries,
providing an outlook of becoming a valuable tool for geographical origin
traceability and transparency.