Multi-Model Fusion for Robust Time-Series Forecasting - PowerPoint PPT Presentation

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Multi-Model Fusion for Robust Time-Series Forecasting

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Multi-Model Fusion for Robust Time-Series Forecasting Weizhong Yan Industrial Artificial Intelligence Lab GE Global Research Center Niskayuna, NY 12309 – PowerPoint PPT presentation

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Title: Multi-Model Fusion for Robust Time-Series Forecasting


1
Multi-Model Fusion for Robust Time-Series
Forecasting
Weizhong Yan
Industrial Artificial Intelligence Lab GE Global
Research Center Niskayuna, NY 12309
2
Outline
  • Problem Description
  • Datasets
  • Challenges and modeling strategies
  • Our Approach
  • The Results
  • Final Remarks

3
Dataset characteristics
Time series with seasonality, trend, and outlier
Non-stationary
4
Challenges and modeling strategies
A large number of time series with different
features. Manual, ad-hoc modeling strategies are
not working
A model-building strategy that can automatically
identify features (i.e., trend, seasonality, etc)
of time series and arrives in a forecast model
with robust accurate performance for a large
number of time series
5
Our Approach(1)
- Preprocessing
automatically
Feature identification Feature treatment
Outliers
Trend
6
Our Approach(2)
- Modeling
Generalized Regression NN
7
Our Approach(3)
- Why GRNN?
Its a variation of nearest neighbor
approach Forecast for an input is a weighted
average of the outputs in the training examples.
The closer an input to the training example, the
larger the weight of its corresponding output.
  • Advantages
  • Its a universal approximator
  • Its fast in training (one-pass learning)
  • Its good for sparse data
  • Disadvantages
  • It requires large amount of online computation
  • It almost does not have any extrapolation
    capability (forecast is bounded by min max of
    the observations)

8
Results(1)
9
Results(2)
10
Results(3)
11
Results(4)
12
Results(5)
13
Results(6)
14
Final remarks
  • Developing a robust time series forecasting model
    is a challenging task.
  • Developing an automatic model building process
    that can be reliably applied to a large number
    of time series with varying features is even more
    challenging.
  • When the number of historical data points is
    small, fusion of multiple simple models seems to
    work better than a single complex model does

Future work
  • Using more GRNNs
  • Optimally determining the tunable parameter,
    spread, for GRNNs

15
Thank you
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