DocumentCode :
50755
Title :
Focal-Test-Based Spatial Decision Tree Learning
Author :
Zhe Jiang ; Shekhar, Shashi ; Xun Zhou ; Knight, Joseph ; Corcoran, Jennifer
Author_Institution :
Dept. of Comput. Sci. & Eng., Univ. of Minnesota, Minneapolis, MN, USA
Volume :
27
Issue :
6
fYear :
2015
fDate :
June 1 2015
Firstpage :
1547
Lastpage :
1559
Abstract :
Given learning samples from a raster data set, spatial decision tree learning aims to find a decision tree classifier that minimizes classification errors as well as salt-and-pepper noise. The problem has important societal applications such as land cover classification for natural resource management. However, the problem is challenging due to the fact that learning samples show spatial autocorrelation in class labels, instead of being independently identically distributed. Related work relies on local tests (i.e., testing feature information of a location) and cannot adequately model the spatial autocorrelation effect, resulting in salt-and-pepper noise. In contrast, we recently proposed a focal-test-based spatial decision tree (FTSDT), in which the tree traversal direction of a sample is based on both local and focal (neighborhood) information. Preliminary results showed that FTSDT reduces classification errors and salt-and-pepper noise. This paper extends our recent work by introducing a new focal test approach with adaptive neighborhoods that avoids over-smoothing in wedge-shaped areas. We also conduct computational refinement on the FTSDT training algorithm by reusing focal values across candidate thresholds. Theoretical analysis shows that the refined training algorithm is correct and more scalable. Experiment results on real world data sets show that new FTSDT with adaptive neighborhoods improves classification accuracy, and that our computational refinement significantly reduces training time.
Keywords :
decision trees; geographic information systems; land cover; pattern classification; FTSDT training algorithm; adaptive neighborhoods; candidate thresholds; classification accuracy; classification errors; computational refinement; decision tree classifier; focal-test-based spatial decision tree learning; land cover classification; local tests; natural resource management; over-smoothing; raster data set; refined training algorithm; salt-and-pepper noise; societal applications; spatial autocorrelation; spatial autocorrelation effect; wedge-shaped areas; Algorithm design and analysis; Correlation; Decision trees; Indexes; Noise; Prediction algorithms; Training; Spatial data mining; focal-test-based spatial decision tree; land cover classification; spatial autocorrelation; spatial data mining;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2014.2373383
Filename :
6963450
Link To Document :
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