第五章 實驗結果與比較
6.2 未來建議
• 預測方面:本研究主要針對客戶與市場進行討論。未來研究可 再以製程技術分類進行預測研究。
• 風險評估:本次研究只討論誤差之標準差,未來研究可再加入 其他風險評估指標。
• 投資效益:本研究只能初估可以減少多少閒置產能或是減少多 少訂單損失,未來研究可再加入投資效益指標研究。
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附錄一 混合式類神經網路的執行步驟
混合式類神經網路是使用 NeuroSolution 套裝軟體執行,其執行步驟如下:
1. 選擇網路模型
2. 輸入項與目標項的選擇
3. 交互驗證和測試資料的選擇:
4. Neural Topology
5. 隱藏層的參數設定
6. 輸出層的參數設定
7. 實驗模擬控制-非監督式學習
8. 實驗模擬控制-監督式學習
9. 輸出輸入展現方法的設定:
10. 進行實驗: