Matches in SemOpenAlex for { <https://semopenalex.org/work/W3010871530> ?p ?o ?g. }
- W3010871530 endingPage "1" @default.
- W3010871530 startingPage "1" @default.
- W3010871530 abstract "Accurate breast cancer detection using automated algorithms remains a problem within the literature. Although a plethora of work has tried to address this issue, an exact solution is yet to be found. This problem is further exacerbated by the fact that most of the existing datasets are imbalanced, i.e., the number of instances of a particular class far exceeds that of the others. In this paper, we propose a framework based on the notion of transfer learning to address this issue and focus our efforts on histopathological and imbalanced image classification. We use the popular VGG-19 as the base model and complement it with several state-of-the-art techniques to improve the overall performance of the system. With the ImageNet dataset taken as the source domain, we apply the learned knowledge in the target domain consisting of histopathological images. With experimentation performed on a large-scale dataset consisting of 277,524 images, we show that the framework proposed in this paper gives superior performance than those available in the existing literature. Through numerical simulations conducted on a supercomputer, we also present guidelines for work in transfer learning and imbalanced image classification." @default.
- W3010871530 created "2020-03-23" @default.
- W3010871530 creator A5004934262 @default.
- W3010871530 creator A5017474506 @default.
- W3010871530 creator A5026688817 @default.
- W3010871530 creator A5028116217 @default.
- W3010871530 creator A5067457382 @default.
- W3010871530 creator A5071905232 @default.
- W3010871530 date "2020-01-01" @default.
- W3010871530 modified "2023-10-18" @default.
- W3010871530 title "Imbalanced Breast Cancer Classification Using Transfer Learning" @default.
- W3010871530 cites W1504543387 @default.
- W3010871530 cites W1919803322 @default.
- W3010871530 cites W1964669384 @default.
- W3010871530 cites W1976039325 @default.
- W3010871530 cites W1979744342 @default.
- W3010871530 cites W1984323748 @default.
- W3010871530 cites W1987769400 @default.
- W3010871530 cites W1992643433 @default.
- W3010871530 cites W2013988526 @default.
- W3010871530 cites W2029965175 @default.
- W3010871530 cites W2068258779 @default.
- W3010871530 cites W2087672002 @default.
- W3010871530 cites W2094791754 @default.
- W3010871530 cites W2107138773 @default.
- W3010871530 cites W2108564850 @default.
- W3010871530 cites W2149676790 @default.
- W3010871530 cites W2151554678 @default.
- W3010871530 cites W2165698076 @default.
- W3010871530 cites W2187523974 @default.
- W3010871530 cites W2230801863 @default.
- W3010871530 cites W2504150216 @default.
- W3010871530 cites W2510224130 @default.
- W3010871530 cites W2515382171 @default.
- W3010871530 cites W2533800772 @default.
- W3010871530 cites W2592929672 @default.
- W3010871530 cites W2763160469 @default.
- W3010871530 cites W2789816877 @default.
- W3010871530 cites W2801492038 @default.
- W3010871530 cites W2803405718 @default.
- W3010871530 cites W2809254203 @default.
- W3010871530 cites W2883567318 @default.
- W3010871530 cites W2892824836 @default.
- W3010871530 cites W2896632969 @default.
- W3010871530 cites W2899061025 @default.
- W3010871530 cites W2901768326 @default.
- W3010871530 cites W2914568698 @default.
- W3010871530 cites W2918484047 @default.
- W3010871530 cites W2919888721 @default.
- W3010871530 cites W2967127264 @default.
- W3010871530 cites W2970152602 @default.
- W3010871530 cites W2973732596 @default.
- W3010871530 cites W2974069439 @default.
- W3010871530 cites W2978969543 @default.
- W3010871530 cites W2980729011 @default.
- W3010871530 cites W2997818913 @default.
- W3010871530 cites W3003819063 @default.
- W3010871530 cites W3004224817 @default.
- W3010871530 cites W3009174700 @default.
- W3010871530 doi "https://doi.org/10.1109/tcbb.2020.2980831" @default.
- W3010871530 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/32175873" @default.
- W3010871530 hasPublicationYear "2020" @default.
- W3010871530 type Work @default.
- W3010871530 sameAs 3010871530 @default.
- W3010871530 citedByCount "44" @default.
- W3010871530 countsByYear W30108715302020 @default.
- W3010871530 countsByYear W30108715302021 @default.
- W3010871530 countsByYear W30108715302022 @default.
- W3010871530 countsByYear W30108715302023 @default.
- W3010871530 crossrefType "journal-article" @default.
- W3010871530 hasAuthorship W3010871530A5004934262 @default.
- W3010871530 hasAuthorship W3010871530A5017474506 @default.
- W3010871530 hasAuthorship W3010871530A5026688817 @default.
- W3010871530 hasAuthorship W3010871530A5028116217 @default.
- W3010871530 hasAuthorship W3010871530A5067457382 @default.
- W3010871530 hasAuthorship W3010871530A5071905232 @default.
- W3010871530 hasConcept C104317684 @default.
- W3010871530 hasConcept C112313634 @default.
- W3010871530 hasConcept C115961682 @default.
- W3010871530 hasConcept C119857082 @default.
- W3010871530 hasConcept C120665830 @default.
- W3010871530 hasConcept C121332964 @default.
- W3010871530 hasConcept C127716648 @default.
- W3010871530 hasConcept C134306372 @default.
- W3010871530 hasConcept C150899416 @default.
- W3010871530 hasConcept C154945302 @default.
- W3010871530 hasConcept C185592680 @default.
- W3010871530 hasConcept C188082640 @default.
- W3010871530 hasConcept C192209626 @default.
- W3010871530 hasConcept C2777212361 @default.
- W3010871530 hasConcept C33923547 @default.
- W3010871530 hasConcept C36503486 @default.
- W3010871530 hasConcept C41008148 @default.
- W3010871530 hasConcept C55493867 @default.
- W3010871530 hasConcept C75294576 @default.
- W3010871530 hasConceptScore W3010871530C104317684 @default.
- W3010871530 hasConceptScore W3010871530C112313634 @default.
- W3010871530 hasConceptScore W3010871530C115961682 @default.