Long memory via networking
Many time-series data are known to exhibit 'long memory', that is, they have an autocorrelation function that decays very slowly with lag. This behaviour has traditionally been attributed to either aggregation of heterogenous processes, nonlinearity, learning dynamics, regime switching, structural breaks, unit roots or fractional Brownian motion. This paper identifies an entirely different mechanism for long memmory generation by showing that it can naturally arise when a large number of simply linear homogenous economic subsystems with a short memory are interconnected to form a network such that the outputs of each of the subsystem are fed into the inputs of others. This networking picture yields a type of aggregation that is not merely additive, resulting in a collective behaviour that is richer than that of individual subsystems. Interestingly, the long memory behaviour is found to be almost entirely determined by the geometry of the network while being relatively insensitive to the specific behaviour of individual agents.
Year of publication: |
2013-04
|
---|---|
Authors: | Schennach, Susanne |
Institutions: | Centre for Microdata Methods and Practice (CEMMAP) |
Saved in:
freely available
Saved in favorites
Similar items by person
-
Nonparametric identification of the classical errors-in-variables model without side information
Schennach, Susanne, (2007)
-
Hu, Yingyao, (2006)
-
Estimating the technology of cognitive and noncognitive skill formation
Cunha, Flavio, (2010)
- More ...