대용량 자료에 대한 밀도 적응 격자 기반의 k-NN 회귀 모형Density Adaptive Grid-based k-Nearest Neighbor Regression Model for Large Dataset
- Other Titles
- Density Adaptive Grid-based k-Nearest Neighbor Regression Model for Large Dataset
- Authors
- 유의기; 정욱
- Issue Date
- Jun-2021
- Publisher
- 한국품질경영학회
- Keywords
- Regression; k-nearest Neighbor; Grid; Density; Computation Time
- Citation
- 품질경영학회지, v.49, no.2, pp 201 - 211
- Pages
- 11
- Indexed
- KCI
- Journal Title
- 품질경영학회지
- Volume
- 49
- Number
- 2
- Start Page
- 201
- End Page
- 211
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/4866
- DOI
- 10.7469/JKSQM.2021.49.2.201
- ISSN
- 1229-1889
2287-9005
- Abstract
- Purpose: This paper proposes a density adaptive grid algorithm for the k-NN regression model to reduce
the computation time for large datasets without significant prediction accuracy loss.
Methods: The proposed method utilizes the concept of the grid with centroid to reduce the number of reference
data points so that the required computation time is much reduced. Since the grid generation process in
this paper is based on quantiles of original variables, the proposed method can fully reflect the density information
of the original reference data set.
Results: Using five real-life datasets, the proposed k-NN regression model is compared with the original
k-NN regression model. The results show that the proposed density adaptive grid-based k-NN regression
model is superior to the original k-NN regression in terms of data reduction ratio and time efficiency ratio,
and provides a similar prediction error if the appropriate number of grids is selected.
Conclusion: The proposed density adaptive grid algorithm for the k-NN regression model is a simple and
effective model which can help avoid a large loss of prediction accuracy with faster execution speed and
fewer memory requirements during the testing phase.
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