Matches in SemOpenAlex for { <https://semopenalex.org/work/W4229068720> ?p ?o ?g. }
- W4229068720 endingPage "24" @default.
- W4229068720 startingPage "1" @default.
- W4229068720 abstract "As a novel deep learning model, gcForest has been widely used in various applications. However, current multi-grained scanning of gcForest produces many redundant feature vectors, and this increases the time cost of the model. To screen out redundant feature vectors, we introduce a hashing screening mechanism for multi-grained scanning and propose a model called HW-Forest which adopts two strategies: hashing screening and window screening. HW-Forest employs perceptual hashing algorithm to calculate the similarity between feature vectors in hashing screening strategy, which is used to remove the redundant feature vectors produced by multi-grained scanning and can significantly decrease the time cost and memory consumption. Furthermore, we adopt a self-adaptive instance screening strategy called window screening to improve the performance of our approach, which can achieve higher accuracy without hyperparameter tuning on different datasets. Our experimental results show that HW-Forest has higher accuracy than other models, and the time cost is also reduced." @default.
- W4229068720 created "2022-05-08" @default.
- W4229068720 creator A5002119636 @default.
- W4229068720 creator A5032245448 @default.
- W4229068720 creator A5034766193 @default.
- W4229068720 creator A5062273342 @default.
- W4229068720 creator A5074457284 @default.
- W4229068720 creator A5080738591 @default.
- W4229068720 creator A5084641325 @default.
- W4229068720 date "2022-07-30" @default.
- W4229068720 modified "2023-09-27" @default.
- W4229068720 title "HW-Forest: Deep Forest with Hashing Screening and Window Screening" @default.
- W4229068720 cites W2194775991 @default.
- W4229068720 cites W2397052757 @default.
- W4229068720 cites W2612695179 @default.
- W4229068720 cites W2618099328 @default.
- W4229068720 cites W2734904907 @default.
- W4229068720 cites W2793706358 @default.
- W4229068720 cites W2797303008 @default.
- W4229068720 cites W2911535432 @default.
- W4229068720 cites W2911964244 @default.
- W4229068720 cites W2919115771 @default.
- W4229068720 cites W2948671658 @default.
- W4229068720 cites W2965656510 @default.
- W4229068720 cites W2971961862 @default.
- W4229068720 cites W2998204190 @default.
- W4229068720 cites W3010029546 @default.
- W4229068720 cites W3021053579 @default.
- W4229068720 cites W3027581678 @default.
- W4229068720 cites W3031670359 @default.
- W4229068720 cites W3035460133 @default.
- W4229068720 cites W3080568059 @default.
- W4229068720 cites W3103613142 @default.
- W4229068720 cites W3119911037 @default.
- W4229068720 cites W3158844933 @default.
- W4229068720 cites W3160330663 @default.
- W4229068720 cites W3169551350 @default.
- W4229068720 cites W3184998497 @default.
- W4229068720 cites W3187369430 @default.
- W4229068720 cites W3191240255 @default.
- W4229068720 cites W3210621838 @default.
- W4229068720 cites W4205127051 @default.
- W4229068720 cites W4232714830 @default.
- W4229068720 doi "https://doi.org/10.1145/3532193" @default.
- W4229068720 hasPublicationYear "2022" @default.
- W4229068720 type Work @default.
- W4229068720 citedByCount "2" @default.
- W4229068720 countsByYear W42290687202023 @default.
- W4229068720 crossrefType "journal-article" @default.
- W4229068720 hasAuthorship W4229068720A5002119636 @default.
- W4229068720 hasAuthorship W4229068720A5032245448 @default.
- W4229068720 hasAuthorship W4229068720A5034766193 @default.
- W4229068720 hasAuthorship W4229068720A5062273342 @default.
- W4229068720 hasAuthorship W4229068720A5074457284 @default.
- W4229068720 hasAuthorship W4229068720A5080738591 @default.
- W4229068720 hasAuthorship W4229068720A5084641325 @default.
- W4229068720 hasConcept C103278499 @default.
- W4229068720 hasConcept C111919701 @default.
- W4229068720 hasConcept C115961682 @default.
- W4229068720 hasConcept C119857082 @default.
- W4229068720 hasConcept C124101348 @default.
- W4229068720 hasConcept C133667856 @default.
- W4229068720 hasConcept C138111711 @default.
- W4229068720 hasConcept C138885662 @default.
- W4229068720 hasConcept C153180895 @default.
- W4229068720 hasConcept C154945302 @default.
- W4229068720 hasConcept C2776401178 @default.
- W4229068720 hasConcept C2778751112 @default.
- W4229068720 hasConcept C38652104 @default.
- W4229068720 hasConcept C41008148 @default.
- W4229068720 hasConcept C41895202 @default.
- W4229068720 hasConcept C67388219 @default.
- W4229068720 hasConcept C74270461 @default.
- W4229068720 hasConcept C83665646 @default.
- W4229068720 hasConcept C8642999 @default.
- W4229068720 hasConcept C99138194 @default.
- W4229068720 hasConceptScore W4229068720C103278499 @default.
- W4229068720 hasConceptScore W4229068720C111919701 @default.
- W4229068720 hasConceptScore W4229068720C115961682 @default.
- W4229068720 hasConceptScore W4229068720C119857082 @default.
- W4229068720 hasConceptScore W4229068720C124101348 @default.
- W4229068720 hasConceptScore W4229068720C133667856 @default.
- W4229068720 hasConceptScore W4229068720C138111711 @default.
- W4229068720 hasConceptScore W4229068720C138885662 @default.
- W4229068720 hasConceptScore W4229068720C153180895 @default.
- W4229068720 hasConceptScore W4229068720C154945302 @default.
- W4229068720 hasConceptScore W4229068720C2776401178 @default.
- W4229068720 hasConceptScore W4229068720C2778751112 @default.
- W4229068720 hasConceptScore W4229068720C38652104 @default.
- W4229068720 hasConceptScore W4229068720C41008148 @default.
- W4229068720 hasConceptScore W4229068720C41895202 @default.
- W4229068720 hasConceptScore W4229068720C67388219 @default.
- W4229068720 hasConceptScore W4229068720C74270461 @default.
- W4229068720 hasConceptScore W4229068720C83665646 @default.
- W4229068720 hasConceptScore W4229068720C8642999 @default.
- W4229068720 hasConceptScore W4229068720C99138194 @default.
- W4229068720 hasFunder F4320321001 @default.
- W4229068720 hasIssue "6" @default.