官术网_书友最值得收藏!

Smoothness assumption

Let's consider a real-valued function f(x) and the corresponding metric spaces X and Y. Such a function is said to be Lipschitz-continuous if:

In other words, if two points x1 and x2 are near, the corresponding output values y1 and y2 cannot be arbitrarily far from each other. This condition is fundamental in regression problems where a generalization is often required for points that are between training samples. For example, if we need to predict the output for a point xtx1 < xt < x2 and the regressor is Lipschitz-continuous, we can be sure that yt will be correctly bounded by y1 and y2. This condition is often called general smoothness, but in semi-supervised it's useful to add a restriction (correlated with the cluster assumption): if two points are in a high density region (cluster) and they are close, then the corresponding outputs must be close too. This extra condition is very important because, if two samples are in a low density region they can belong to different clusters and their labels can be very different. This is not always true, but it's useful to include this constraint to allow some further assumptions in many definitions of semi-supervised models.

主站蜘蛛池模板: 和政县| 徐闻县| 巧家县| 阜宁县| 高清| 舞钢市| 德钦县| 苗栗县| 沙湾县| 乌鲁木齐市| 宝丰县| 大理市| 东台市| 博野县| 怀柔区| 吉隆县| 保山市| 泗水县| 临沧市| 廊坊市| 阿图什市| 莎车县| 乐至县| 宁波市| 新和县| 沙坪坝区| 罗城| 黑水县| 西青区| 新安县| 普格县| 高邮市| 金沙县| 海林市| 福建省| 乐亭县| 商河县| 海伦市| 巴东县| 长宁县| 新乡市|