According to Hill and Gauch, DCA suppresses two artifacts inherent in most other multivariate analyses when applied to
gradient data. An example is a time-series of plant species colonising a new habitat; early
successional species are replaced by mid-successional species, then by late successional ones (see example below). When such data are analysed by a standard
ordination such as a correspondence analysis: • the ordination scores of the samples will exhibit the 'edge effect', i.e. the variance of the scores at the beginning and the end of a regular succession of species will be considerably smaller than that in the middle, • when presented as a graph the points will be seen to follow a
horseshoe shaped curve rather than a straight line ('arch effect'), even though the process under analysis is a steady and continuous change that human intuition would prefer to see as a linear trend. Outside ecology, the same artifacts occur when gradient data are analysed (e.g. soil properties along a transect running between 2 different geologies, or behavioural data over the lifespan of an individual) because the curved projection is an accurate representation of the shape of the data in multivariate space. Ter Braak and Prentice (1987, p. 121) cite a
simulation study analysing two-dimensional species packing models resulting in a better performance of DCA compared to CA. ==Method==