Matches in SemOpenAlex for { <https://semopenalex.org/work/W2963587312> ?p ?o ?g. }
- W2963587312 endingPage "2108" @default.
- W2963587312 startingPage "2101" @default.
- W2963587312 abstract "Successful identification of complex odors by sensor arrays remains a challenging problem. Herein, we report robust, category-specific multiclass-time series classification using an array of 20 carbon nanotube-based chemical sensors. We differentiate between samples of cheese, liquor, and edible oil based on their odor. In a two-stage machine-learning approach, we first obtain an optimal subset of sensors specific to each category and then validate this subset using an independent and expanded data set. We determined the optimal selectors via independent selector classification accuracy, as well as a combinatorial scan of all 4845 possible four selector combinations. We performed sample classification using two models-a k-nearest neighbors model and a random forest model trained on extracted features. This protocol led to high classification accuracy in the independent test sets for five cheese and five liquor samples (accuracies of 91% and 78%, respectively) and only a slightly lower (73%) accuracy on a five edible oil data set." @default.
- W2963587312 created "2019-07-30" @default.
- W2963587312 creator A5001355965 @default.
- W2963587312 creator A5004173902 @default.
- W2963587312 creator A5008879837 @default.
- W2963587312 creator A5045135784 @default.
- W2963587312 creator A5046304461 @default.
- W2963587312 creator A5060164739 @default.
- W2963587312 creator A5079296395 @default.
- W2963587312 date "2019-07-24" @default.
- W2963587312 modified "2023-10-03" @default.
- W2963587312 title "Chemiresistive Sensor Array and Machine Learning Classification of Food" @default.
- W2963587312 cites W1638185552 @default.
- W2963587312 cites W1968028676 @default.
- W2963587312 cites W1970333295 @default.
- W2963587312 cites W1973647188 @default.
- W2963587312 cites W1978019692 @default.
- W2963587312 cites W1989036786 @default.
- W2963587312 cites W1991532206 @default.
- W2963587312 cites W2000647190 @default.
- W2963587312 cites W2006882326 @default.
- W2963587312 cites W2017421307 @default.
- W2963587312 cites W2028530535 @default.
- W2963587312 cites W2030411281 @default.
- W2963587312 cites W2035104901 @default.
- W2963587312 cites W2036632198 @default.
- W2963587312 cites W2039260438 @default.
- W2963587312 cites W2039621303 @default.
- W2963587312 cites W2046986241 @default.
- W2963587312 cites W2047145687 @default.
- W2963587312 cites W2047553059 @default.
- W2963587312 cites W2048016358 @default.
- W2963587312 cites W2050801799 @default.
- W2963587312 cites W2052150857 @default.
- W2963587312 cites W2056375296 @default.
- W2963587312 cites W2061434985 @default.
- W2963587312 cites W2063325093 @default.
- W2963587312 cites W2068039256 @default.
- W2963587312 cites W2074876378 @default.
- W2963587312 cites W2091089517 @default.
- W2963587312 cites W2092531228 @default.
- W2963587312 cites W2103511661 @default.
- W2963587312 cites W2103673724 @default.
- W2963587312 cites W2122111042 @default.
- W2963587312 cites W2124486385 @default.
- W2963587312 cites W2137146618 @default.
- W2963587312 cites W2148871843 @default.
- W2963587312 cites W2154744349 @default.
- W2963587312 cites W2159236148 @default.
- W2963587312 cites W2161659751 @default.
- W2963587312 cites W2168736308 @default.
- W2963587312 cites W2499757947 @default.
- W2963587312 cites W2507312381 @default.
- W2963587312 cites W2516172611 @default.
- W2963587312 cites W2525853733 @default.
- W2963587312 cites W2542429397 @default.
- W2963587312 cites W2564083981 @default.
- W2963587312 cites W2690807789 @default.
- W2963587312 cites W2740803790 @default.
- W2963587312 cites W2773904371 @default.
- W2963587312 cites W2787745639 @default.
- W2963587312 cites W2802314367 @default.
- W2963587312 cites W2891195344 @default.
- W2963587312 cites W2899131501 @default.
- W2963587312 cites W2905097178 @default.
- W2963587312 cites W3209709389 @default.
- W2963587312 cites W585490902 @default.
- W2963587312 doi "https://doi.org/10.1021/acssensors.9b00825" @default.
- W2963587312 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/31339035" @default.
- W2963587312 hasPublicationYear "2019" @default.
- W2963587312 type Work @default.
- W2963587312 sameAs 2963587312 @default.
- W2963587312 citedByCount "79" @default.
- W2963587312 countsByYear W29635873122019 @default.
- W2963587312 countsByYear W29635873122020 @default.
- W2963587312 countsByYear W29635873122021 @default.
- W2963587312 countsByYear W29635873122022 @default.
- W2963587312 countsByYear W29635873122023 @default.
- W2963587312 crossrefType "journal-article" @default.
- W2963587312 hasAuthorship W2963587312A5001355965 @default.
- W2963587312 hasAuthorship W2963587312A5004173902 @default.
- W2963587312 hasAuthorship W2963587312A5008879837 @default.
- W2963587312 hasAuthorship W2963587312A5045135784 @default.
- W2963587312 hasAuthorship W2963587312A5046304461 @default.
- W2963587312 hasAuthorship W2963587312A5060164739 @default.
- W2963587312 hasAuthorship W2963587312A5079296395 @default.
- W2963587312 hasBestOaLocation W29635873122 @default.
- W2963587312 hasConcept C116834253 @default.
- W2963587312 hasConcept C119857082 @default.
- W2963587312 hasConcept C12267149 @default.
- W2963587312 hasConcept C123860398 @default.
- W2963587312 hasConcept C153180895 @default.
- W2963587312 hasConcept C154945302 @default.
- W2963587312 hasConcept C169258074 @default.
- W2963587312 hasConcept C177264268 @default.
- W2963587312 hasConcept C178790620 @default.
- W2963587312 hasConcept C185592680 @default.
- W2963587312 hasConcept C199360897 @default.