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A multivariate ordinal time series is a process , , where takes a value in the set of ordered categories, . We are interested in identifying the underlying structure of the process: such as serial dependence, trends, and useful explanatory/exogenous variables.
The data is weekly rankings of the following 10 globally traded currency exchange rates.
The period is from Jan 3, 2000 to June 30, 2009. The rankings, , are based on spot returns Rankings can also be based on other measures such as a volatility on a position of fixed lot size. Let denote the week t ranking of exchange rate k . Along with the rankings, the underlying weekly return and and weekly historic volatility are included. The data is obtained from Bloomberg.
We are interested in the following:
For each , the historic volatility of all k exchange rates , , are used as exogenous variables. When analyzing ordinal series, one can not rely on the standard techniques for analyzing real-valued time series. For example, consider the following model for Y t taking one of three values 0, 1, or 2.
If we estimate φ 0 , φ 1 , and φ 2 from observed data and predict by
Thereś no restriction on from taking a value outside the set . Further can only take one of three values: , , or ; it can be shown that the is not constant over time, violating the AR model assumptions.
One common approach ([1], Chapter 13 of [2], [3],[5]and [5]) to time domain analysis of an ordinal valued time series, Y t is based on latent state variable models. Assume the existence of underlying state variable ξ t and cut points a 1 , a 2 , . . ., such that probability takes a certain category is determined by . In some cases, [3] and [5]for example, Markov assumptions are made on the distribution of . The distribution of is estimated by a generalized linear model and model parameters are estimated by maximum likelihood.
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