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5 - NYU Stern
5 - NYU Stern

... Find the probability that this asset will be worth more than $55,000 after one year (52 weeks). The logarithms here are base-e, as are all logarithms that follow. In anticipation of parts (b) through (d), it would help to solve this first in terms of general  and . If you’re facile with Excel, thi ...
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... PCA knows nothing about the spatial distribution of data • if the geographic distribution of data is not uniform (e.g. irregularly spaced stations or lat-lon grids) then data dense regions may be over-represented and data-sparse regions will be under-represented • For lat-lon data, high latitude dat ...
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Data assimilation

Data assimilation is the process by which observations are incorporated into a computer model of a real system. Applications of data assimilation arise in many fields of geosciences, perhaps most importantly in weather forecasting and hydrology. The most commonly used form of data assimilation proceeds by analysis cycles. In each analysis cycle, observations of the current (and possibly past) state of a system are combined with the results from a numerical model (the forecast) to produce an analysis, which is considered as 'the best' estimate of the current state of the system. This is called the analysis step. Essentially, the analysis step tries to balance the uncertainty in the data and in the forecast. The result may be the best estimate of the physical system, but it may not the best estimate of the model's incomplete representation of that system, so some filtering may be required. The model is then advanced in time and its result becomes the forecast in the next analysis cycle. As an alternative to analysis cycles, data assimilation can proceed by some sort of nudging process, where the model equations themselves are modified to add terms that continuously push the model towards observations.
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