Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining
Coffee is among the most popular beverages in many cities all over the world, being both at the core of the busiest shops and a long-standing tradition of recreational and social value for many people. Among the many coffee variants, espresso attracts the interest of different stakeholders: from cit...
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doaj-70354cedd96c405aadacf9ac2a0dd5ab2020-11-25T03:30:13ZengMDPI AGElectronics2079-92922020-01-019110010.3390/electronics9010100electronics9010100Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule MiningDaniele Apiletti0Eliana Pastor1Department of Control and Computer Engineering, Politecnico di Torino, Corso Duca degli Abruzzi 24, 10129 Torino, ItalyDepartment of Control and Computer Engineering, Politecnico di Torino, Corso Duca degli Abruzzi 24, 10129 Torino, ItalyCoffee is among the most popular beverages in many cities all over the world, being both at the core of the busiest shops and a long-standing tradition of recreational and social value for many people. Among the many coffee variants, espresso attracts the interest of different stakeholders: from citizens consuming espresso around the city, to local business activities, coffee-machine vendors and international coffee industries. The quality of espresso is one of the most discussed and investigated issues. So far, it has been addressed by means of human experts, electronic noses, and chemical approaches. The current work, instead, proposes a data-driven approach exploiting association rule mining. We analyze a real-world dataset of espresso brewing by professional coffee-making machines, and extract all correlations among external quality-influencing variables and actual metrics determining the quality of the espresso. Thanks to the application of association rule mining, a powerful data-driven exhaustive and explainable approach, results are expressed in the form of human-readable rules combining the variables of interest, such as the grinder settings, the extraction time, and the dose amount. Novel insights from real-world coffee extractions collected on the field are presented, together with a data-driven approach, able to uncover insights into the espresso quality and its impact on both the life of consumers and the choices of coffee-making industries.https://www.mdpi.com/2079-9292/9/1/100association rule miningcorrelation analysiscoffee-machine remote monitoringdata-driven product quality evaluation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniele Apiletti Eliana Pastor |
spellingShingle |
Daniele Apiletti Eliana Pastor Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining Electronics association rule mining correlation analysis coffee-machine remote monitoring data-driven product quality evaluation |
author_facet |
Daniele Apiletti Eliana Pastor |
author_sort |
Daniele Apiletti |
title |
Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining |
title_short |
Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining |
title_full |
Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining |
title_fullStr |
Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining |
title_full_unstemmed |
Correlating Espresso Quality with Coffee-Machine Parameters by Means of Association Rule Mining |
title_sort |
correlating espresso quality with coffee-machine parameters by means of association rule mining |
publisher |
MDPI AG |
series |
Electronics |
issn |
2079-9292 |
publishDate |
2020-01-01 |
description |
Coffee is among the most popular beverages in many cities all over the world, being both at the core of the busiest shops and a long-standing tradition of recreational and social value for many people. Among the many coffee variants, espresso attracts the interest of different stakeholders: from citizens consuming espresso around the city, to local business activities, coffee-machine vendors and international coffee industries. The quality of espresso is one of the most discussed and investigated issues. So far, it has been addressed by means of human experts, electronic noses, and chemical approaches. The current work, instead, proposes a data-driven approach exploiting association rule mining. We analyze a real-world dataset of espresso brewing by professional coffee-making machines, and extract all correlations among external quality-influencing variables and actual metrics determining the quality of the espresso. Thanks to the application of association rule mining, a powerful data-driven exhaustive and explainable approach, results are expressed in the form of human-readable rules combining the variables of interest, such as the grinder settings, the extraction time, and the dose amount. Novel insights from real-world coffee extractions collected on the field are presented, together with a data-driven approach, able to uncover insights into the espresso quality and its impact on both the life of consumers and the choices of coffee-making industries. |
topic |
association rule mining correlation analysis coffee-machine remote monitoring data-driven product quality evaluation |
url |
https://www.mdpi.com/2079-9292/9/1/100 |
work_keys_str_mv |
AT danieleapiletti correlatingespressoqualitywithcoffeemachineparametersbymeansofassociationrulemining AT elianapastor correlatingespressoqualitywithcoffeemachineparametersbymeansofassociationrulemining |
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1724576810062053376 |