1. 计算相似度
已知3个用户对两部影片的打分数据如下:
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在二维坐标系Plot如下:
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现在有Mr. X 对两部影片打分为(1,4),求Mr. X和前三位用户的相似度
1) Manhattan Distance:
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2) Euclidean Distance
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3) Pearson Correlation Coefficient
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4) Cosine Similarity
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如何选择合适的计算方法?
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2. 推荐KNN
假设Ann的三个邻居如下
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三个邻居对Grey Wardens打分如下
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K=3时,对Ann推荐Grey Wardens的指数是
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K=2时,对Ann推荐Grey Wardens的指数是
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