negative weights
Weights in 'nls' and in forecasting are two very different things. Weights in functions like 'nls', 'lm', 'lme', and often also 'optim' are typically justified from a maximum likelihood argument. In that case, the weights are (exactly or metaphorically, depending on context) inversely proportional to the variances of the observations. Negative weights in that context implies imaginary standard deviations; I'll let you extrapolate from there. Weights in forecasting, however, commonly occur when modeling, for example, the output of a reactor: If the reactor delivers less than its standard output on one cycle, it will often do the opposite on the next. This is common with straight "moving average" models in the standard time series literature, e.g., the famous Box and Jenkins (or Box, Jenkins and Reinsel now) book "Time Series Analysis, Forecasting and Control". Any good book on "arima" / "Box Jenkins" modeling should discuss this. You can get started on this with the time series chapter in the Venables and Ripley book, "Modern Applied Statistics with S". hope this helps, spencer graves
BBands wrote:
On 4/28/06, Dirk Eddelbuettel <edd at debian.org> wrote:
So negative weights don't really fit that framework. That said, from a purely numerical as opposed to statistical point of view you can probably minimize a suitable expression with nls() or optim(). But you'd be 'on your own out there'.
Hi Dirk,
I was looking for an all-in sort of solution, but preprocessing the
data will get me where I need to go, so no traipsing around in the
'out there' for me. Perhaps I don't have the necessary statistical
sophistication, but negative weights for linear models seem like a
perfectly reasonable solution to the problem of different forecasting
abilities at different horizons.
jab
--
John Bollinger, CFA, CMT
www.BollingerBands.com
If you advance far enough, you arrive at the beginning.
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