Forecasting with GluonTS

If you are trying to forecast market activities with a learning set over the past 2-3-5 years, you're going to have big issues:
• the market moves as Big Agenda movers [reluctantly] move it.
• the Big Agenda movers used to take in fundamental data, prognosticate their own 'wisdom' ["add alpha'] to it, and then executed with as little fanfare as they could manage.
• in the past 18-24 months, the vast majority of market movement has been triggered by non-market events, even to the point of competing with (or entirely swamping) earnings season for moving the indexes. :wtf:

Long story short? Throwing money, time, or Keras (or Gluons) at the problem won't solve it. :(
The problem is less in the model than in the environment: modeling depends on stable data -- the fin/markets environment has not only changed (from what it was), but it remains in flux.

One potential solution? Go out ~20 years, such that the financial crisis/subsequent recovery represent only half of your data. Your model will have to be much looser; your return expectations will have to be much lower; your risk/position management will have to be much tighter. BUT, you will likely have a model/trading RPA set that is much more robust (profit-wise and risk-wise) to the errant Tweet.:):):)
 
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