Monthly Pork Price Prediction Applying Projection Pursuit Regression: Modeling, Empirical Research, Comparison, and Sustainability Implications
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Keywords
monthly pork price prediction; projection pursuit regressive model; parasitism–predation algorithm; sustainability implications; empirical research;All these keywords.
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