Goal: Where does statistically significant spatial clusters of high values (hot spots) and low values (cold spots) of drop lie?

Variable: drop (employment loss)

  • Monthly employment Jan 2003- Dec.2014
  • Data availabl:2840 counties
  • drop

Tool : Hot spot analysis

Step:

  • Add Mean center of population.shp (3141 counties), U.S. county.shp (3141 counties), drop value (2840 counties)
  • Join the drop to the mean center, export as a new layer file.
  • Project the data
  • Run Hot Spot Analysis (Default for Conceptualization of Spatial Relationship, and Distance Method)
  • Make a Map
  1. Distribution of drop, using natural Break

drop 3141

2 Hot spot Analysis using 3141 counties.

  • Low employment loss gathers in north part
  • High employment loss lies in west and southeast part

Hotspotdrop 3141

 

Questions:

  • Previous map is made of 3141 counties, however, there are only 2840 counties with drop value. Missing value will be noted as 0, will this affect the result?
  • Hawaii and Alaska are included. Will exclusion of HI and AK affect the result?

Both: Yes

  • Redraw the map
  • Only keep the matched records – 2838 counties
  • Exclude Hawaii and Alaska

 

3. Hot spot Analysis using 2838 counties

Hotspot drop 2838

4. Hot spot Analysis using U.S. contiguous counties, Hawaii and Alaska removed.

Hotspot drop contiguous

Conclusion: Hot Spot analysis is sensitive to spatial outlier. It only identifies low value clusters or high value clusters. What if I want to find an outlier, for example low value unit among high value cluster?

I should use spatial autocorrelation tool- Anselin Local Moran’s I

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