• 沒有找到結果。

現今用來衡量推薦的指標非常眾多,如何選擇適當的指標來衡量推薦,

實際上是相當困難的。因為某些指標表現的好,相對的另一個指標就會表 現得比較差。若未來能加入一種綜合評估的指標,幫助指標之間的取捨,

在任何情境中都能判斷推薦的好壞,就能提升使用者滿意度。

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