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Figure/Table detail

Investigating nonlinear factors influencing multi-scale urban land surface temperature using machine learning models
SHI Yue, FAN Qiang, SUN Shuang, SONG Xiaonan, ZHANG Bing
Journal of Geographical Sciences, 2025, 35(9): 1998-2014.   DOI: 10.1007/s11442-025-2400-x

Figure 5 Training and test set results
Other figure/table from this article
  • Figure 1 Location of Shenyang city, Liaoning province, Northeast China (Note: With the map approval number GS(2024)0650, the base map remains unmodified.)
  • Table 1 Classification rules for different temperature zones
  • Table 2 Landscape index and its significance
  • Table 3 Factors influencing LST
  • Figure 2 Spatial variation map of influencing factors in Shenyang for 2020 (Note: Owing to space limitations, only the spatial distribution of the influencing factors for 2020 is shown.)
  • Figure 3 Mean standard deviation classification map of LST in Shenyang for 2005, 2010, 2015 and 2020
  • Table 4 Area and proportion of temperature classifications
  • Figure 4 Pearson’s analysis results at different scales for 2005, 2010, 2015 and 2020 (*p < 0.05, ** p < 0.01)
  • Figure 6 Significance ranking of factors (The size of the symbols represents the strength of the influence, while the colour gradient visually illustrates the impact of each factor on LST.)

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