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Big Data Research in Italy: A Perspective 被引量:1
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作者 Sonia Bergamaschi Emanuele Carlini +9 位作者 michelangelo ceci Barbara Furletti Fosca Giannotti Donato Malerba Mario Mezzanzanica Anna Monreale Gabriella Pasi Dino Pedreschi Raffele Perego Salvatore Ruggieri 《Engineering》 SCIE EI 2016年第2期163-170,共8页
The aim of this article is to synthetically describe the research projects that a selection of Italian univer- sities is undertaking in the context of big data. Far from being exhaustive, this article has the objectiv... The aim of this article is to synthetically describe the research projects that a selection of Italian univer- sities is undertaking in the context of big data. Far from being exhaustive, this article has the objective of offering a sample of distinct applications that address the issue of managing huge amounts of data in Italy, collected in relation to diverse domains. 展开更多
关键词 Big data Smart cities EnergyJob offersPrivacy
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A novel random forest-based approach for the non-destructive and explainable estimation of ammonia and chlorophyll in fresh-cut rocket leaves
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作者 Stefano Polimena Gianvito Pio +3 位作者 Maria Cefola Michela Palumbo michelangelo ceci Giovanni Attolico 《Information Processing in Agriculture》 2025年第2期221-231,共11页
The perceived visual quality of fruits and vegetables plays a central role in the choices made by retail customers.Machine learning(ML)approaches based on image analysis have been recently proposed to overcome the poo... The perceived visual quality of fruits and vegetables plays a central role in the choices made by retail customers.Machine learning(ML)approaches based on image analysis have been recently proposed to overcome the poor efficiency and subjectivity of human visual evaluation as well as the expensiveness and destructiveness of physical and chemical methods that measure internal indicators.In this paper,we propose a ML method based on Random Forests for estimating the chlorophyll and ammonia contents(considered,in the literature,reliable indicators of product freshness)from images of fresh-cut rocket leaves.Our approach copes with specific issues raised by(i)the non-uniform distributions of ammonia and chlorophyll values and(ii)the need to provide insights into the features that produce a particular model outcome,aiming to enhance its trustworthiness.Our experiments,performed on real images of fresh-cut rocket leaves,proved that the proposed approach significantly outperforms 7 competitor methods,obtaining an improvement of the RSE results of 6.6%for the prediction of the ammonia and of 10.4%for the prediction of the chlorophyll over its best competitor.Moreover,a specific analysis of the explainability of the predictions showed that the learned models are based on reasonable features,empowering their acceptance in real-world applications. 展开更多
关键词 Fresh-cut rocket leaves Consumer acceptability Machine learning Explainability
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