Self organizing map is claimed to be able to visualize/cluster the high-dimensional data on a smaller dimensional space. I have some difficulties in understanding this statement.

Consider a six-dimensional data set, the codebook vector/reference vector is also of six-dimensional. According to the SOM algorithm, updating these reference vectors are also conducted in the six-dimensional vector space. If we are considering a two dimensional map, how should I understand the map between the six-dimensional data space and two-dimensional map space?