norm.ubiquity: Compute a measure of complexity by normalizing ubiquity of...

norm.ubiquityR Documentation

Compute a measure of complexity by normalizing ubiquity of industries

Description

This function computes a measure of complexity by normalizing ubiquity of industries. We divide the share of the total count (employment, number of firms, number of patents, ...) in an industry by its share of ubiquity. Ubiquity is given by the number of regions in which an industry can be found (location quotient > 1) from regions - industries (incidence) matrices

Usage

norm.ubiquity(mat)

Arguments

mat

An incidence matrix with regions in rows and industries in columns

Author(s)

Pierre-Alexandre Balland p.balland@uu.nl

References

Balland, P.A. and Rigby, D. (2017) The Geography of Complex Knowledge, Economic Geography 93 (1): 1-23.

See Also

diversity, location.quotient, ubiquity, TCI, MORt

Examples

## generate a region - industry matrix with full count
set.seed(31)
mat <- matrix(sample(0:10,20,replace=T), ncol = 4)
rownames(mat) <- c ("R1", "R2", "R3", "R4", "R5")
colnames(mat) <- c ("I1", "I2", "I3", "I4")

## run the function
norm.ubiquity (mat)

PABalland/EconGeo documentation built on Jan. 5, 2023, 8:40 a.m.