Fig. 1. Air tasking cycle
Fig. 2. Joint targeting cycle
Fig. 3. Target process in phase 5
Fig. 4. Machine learning based dynamic targeting
Fig. 5. Experiment flow chart
Fig. 6. Example of survey data
Fig. 7. Learned decision tree
Table 1. Multiple ATO cycle man-hour
Table 2. Data attributes of JIPTL
Table 3. Target category, count, ratio of the gulf war
Table 4. Target priority class
Table 5. Daily strikes by AIF categories
Table 6. Data pre-processing method
Table 7. Pre-processing of experimental dataset
Table 8. Form of pre-processed data
Table 9. Terminal nodes
Table 11. Result of the performance test(confusion matrix and statistics)
Table 10. Decision nodes and p-value
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