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                > 演示自己編碼實現線性回歸訓練過程,以及調用SKLearn API。 > 本課學習時長評估:2小時。 > [代碼原始鏈接](https://www.cnblogs.com/yuxiangyang/p/11180285.html) > [代碼用的數據鏈接](https://github.com/LXP-Never/data) ## 前置學習內容 [經典算法-線性回歸](http://www.hmoore.net/pumadong/laodong_ml/1685773) ## 代碼演示 代碼演示部分,點擊代碼原始鏈接學習查看即可。 **代碼共演示了3點內容:** * 自己編碼實現線性回歸訓練過程。 * sklearn中處理線性回歸問題的API。 * 模型的保存和加載:---持久化存儲。
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