Matches in SemOpenAlex for { <https://semopenalex.org/work/W4382936783> ?p ?o ?g. }
Showing items 1 to 92 of
92
with 100 items per page.
- W4382936783 abstract "Effective health management is critical to ensure patients have access to necessary healthcare services. There are a number of challenges that can limit the provision of medical treatment, including a shortage of healthcare professionals, limited resources, and geographical barriers. Hospital of the Future (HoF) incorporates a number of technologies and innovations to improve the delivery of healthcare services and support effective health management. 5G network slicing has the potential to greatly enhance the capabilities of hospitals and the delivery of healthcare services. The network can be sliced into three main services; eMBB, mMTC, and URLLC. This paper presented a comparison of various supervised machine learning models in predicting the three network services. The classification for the slices is based on HoF applications’ requirements. Deep learning model has the highest accuracy of 100% with total runtime of 85.7s and lowest standard deviation value. In comparison with other machine learning models, deep learning is the best model in predicting 5GHoF slices." @default.
- W4382936783 created "2023-07-04" @default.
- W4382936783 creator A5041367517 @default.
- W4382936783 creator A5047747287 @default.
- W4382936783 creator A5057166456 @default.
- W4382936783 creator A5068466678 @default.
- W4382936783 creator A5077358441 @default.
- W4382936783 creator A5078202884 @default.
- W4382936783 date "2023-05-20" @default.
- W4382936783 modified "2023-09-25" @default.
- W4382936783 title "Classification of Hospital of the Future Applications using Machine Learning" @default.
- W4382936783 cites W2347109135 @default.
- W4382936783 cites W2465285002 @default.
- W4382936783 cites W2626574340 @default.
- W4382936783 cites W2741988388 @default.
- W4382936783 cites W2782306479 @default.
- W4382936783 cites W2794908468 @default.
- W4382936783 cites W2804765537 @default.
- W4382936783 cites W2954640990 @default.
- W4382936783 cites W2966148954 @default.
- W4382936783 cites W2972351145 @default.
- W4382936783 cites W3001069493 @default.
- W4382936783 cites W3006210340 @default.
- W4382936783 cites W3011329260 @default.
- W4382936783 cites W3012157169 @default.
- W4382936783 cites W3034899324 @default.
- W4382936783 cites W3035239279 @default.
- W4382936783 cites W3047336578 @default.
- W4382936783 cites W3113950615 @default.
- W4382936783 cites W3120977319 @default.
- W4382936783 cites W3183455096 @default.
- W4382936783 cites W3196048942 @default.
- W4382936783 cites W3213721154 @default.
- W4382936783 cites W4229077893 @default.
- W4382936783 doi "https://doi.org/10.1109/iscaie57739.2023.10165466" @default.
- W4382936783 hasPublicationYear "2023" @default.
- W4382936783 type Work @default.
- W4382936783 citedByCount "0" @default.
- W4382936783 crossrefType "proceedings-article" @default.
- W4382936783 hasAuthorship W4382936783A5041367517 @default.
- W4382936783 hasAuthorship W4382936783A5047747287 @default.
- W4382936783 hasAuthorship W4382936783A5057166456 @default.
- W4382936783 hasAuthorship W4382936783A5068466678 @default.
- W4382936783 hasAuthorship W4382936783A5077358441 @default.
- W4382936783 hasAuthorship W4382936783A5078202884 @default.
- W4382936783 hasConcept C108583219 @default.
- W4382936783 hasConcept C119857082 @default.
- W4382936783 hasConcept C136764020 @default.
- W4382936783 hasConcept C138885662 @default.
- W4382936783 hasConcept C154945302 @default.
- W4382936783 hasConcept C160735492 @default.
- W4382936783 hasConcept C162324750 @default.
- W4382936783 hasConcept C194051981 @default.
- W4382936783 hasConcept C2776190703 @default.
- W4382936783 hasConcept C2778137410 @default.
- W4382936783 hasConcept C3018075012 @default.
- W4382936783 hasConcept C3018457447 @default.
- W4382936783 hasConcept C41008148 @default.
- W4382936783 hasConcept C41895202 @default.
- W4382936783 hasConcept C50522688 @default.
- W4382936783 hasConceptScore W4382936783C108583219 @default.
- W4382936783 hasConceptScore W4382936783C119857082 @default.
- W4382936783 hasConceptScore W4382936783C136764020 @default.
- W4382936783 hasConceptScore W4382936783C138885662 @default.
- W4382936783 hasConceptScore W4382936783C154945302 @default.
- W4382936783 hasConceptScore W4382936783C160735492 @default.
- W4382936783 hasConceptScore W4382936783C162324750 @default.
- W4382936783 hasConceptScore W4382936783C194051981 @default.
- W4382936783 hasConceptScore W4382936783C2776190703 @default.
- W4382936783 hasConceptScore W4382936783C2778137410 @default.
- W4382936783 hasConceptScore W4382936783C3018075012 @default.
- W4382936783 hasConceptScore W4382936783C3018457447 @default.
- W4382936783 hasConceptScore W4382936783C41008148 @default.
- W4382936783 hasConceptScore W4382936783C41895202 @default.
- W4382936783 hasConceptScore W4382936783C50522688 @default.
- W4382936783 hasFunder F4320321147 @default.
- W4382936783 hasLocation W43829367831 @default.
- W4382936783 hasOpenAccess W4382936783 @default.
- W4382936783 hasPrimaryLocation W43829367831 @default.
- W4382936783 hasRelatedWork W3014300295 @default.
- W4382936783 hasRelatedWork W3164822677 @default.
- W4382936783 hasRelatedWork W4223943233 @default.
- W4382936783 hasRelatedWork W4225161397 @default.
- W4382936783 hasRelatedWork W4250304930 @default.
- W4382936783 hasRelatedWork W4309045103 @default.
- W4382936783 hasRelatedWork W4312200629 @default.
- W4382936783 hasRelatedWork W4360585206 @default.
- W4382936783 hasRelatedWork W4364306694 @default.
- W4382936783 hasRelatedWork W4380086463 @default.
- W4382936783 isParatext "false" @default.
- W4382936783 isRetracted "false" @default.
- W4382936783 workType "article" @default.