Automatic classification of literature in systematic reviews on food safety using machine learning
Autor: | Leonieke M. van den Bulk, Yamine Bouzembrak, Anand Gavai, Ningjing Liu, Lukas J. van den Heuvel, Hans J.P. Marvin |
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Jazyk: | angličtina |
Rok vydání: | 2022 |
Předmět: |
Artificial intelligence
Team Agrochains Team Data Science Literature reviews Text mining Food safety hazards Nutrition. Foods and food supply TP368-456 Applied Microbiology and Biotechnology Food processing and manufacture Classification models Document screening TX341-641 Research Article Food Science Biotechnology |
Zdroj: | Current Research in Food Science, Vol 5, Iss, Pp 84-95 (2022) Current Research in Food Science 5 (2022) Current Research in Food Science Current Research in Food Science, 5, 84-95 |
ISSN: | 2665-9271 |
Popis: | Systematic reviews are used to collect relevant literature to answer a research question in a way that is clear, thorough, unbiased and reproducible. They are implemented as a standard method in the domain of food safety to obtain a literature overview on the state-of-the-art research related to food safety topics of interest. A disadvantage to systematic reviews, however, is that this process is time-consuming and requires expert domain knowledge. The work reported here aims to reduce the time needed by an expert to screen all possible relevant articles by applying machine learning techniques to classify the articles automatically as either relevant or not relevant. Eight different machine learning algorithms and ensembles of all combinations of these algorithms were tested on two different systematic reviews on food safety (i.e. chemical hazards in cereals and leafy greens). The results showed that the best performance was obtained by an ensemble of naive Bayes and a support vector machine, resulting in an average decrease of 32.8% in the amount of articles the expert has to read and an average decrease in irrelevant articles of 57.8% while keeping 95% of the relevant articles. It was concluded that automatic classification of the literature in a systematic literature review can support experts in their task and save valuable time without compromising the quality of the review. |
Databáze: | OpenAIRE |
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