V2EX laplacian eigenmaps

Laplacian Eigenmaps

Definition / 释义

Laplacian Eigenmaps(拉普拉斯特征映射)是一种非线性降维谱嵌入(spectral embedding)方法:把数据点看作图(graph)上的节点,根据相似度连边,构造图拉普拉斯算子(Graph Laplacian),再用其特征向量(eigenvectors)把高维数据映射到低维空间,从而尽量保持“相近点在低维中仍相近”的局部结构。常用于流形学习、可视化、聚类预处理等。(在不同文献里也常被视为谱方法的一种代表。)

Pronunciation / 发音

/lpln anmps/

Examples / 例句

Laplacian Eigenmaps can reduce high-dimensional data to two dimensions for visualization.
Laplacian Eigenmaps 可以把高维数据降到二维用于可视化。

By building a k-nearest-neighbor graph and computing the graph Laplacian, Laplacian Eigenmaps produces a low-dimensional embedding that preserves local neighborhood relationships.
通过构建 k 近邻图并计算图拉普拉斯矩阵,Laplacian Eigenmaps 能生成保留局部邻域关系的低维嵌入表示。

Etymology / 词源

ul>
  • Laplacian 来自法国数学家 Pierre-Simon Laplace(拉普拉斯) 的名字;“拉普拉斯算子/矩阵”在连续与离散(图)情形中都用于刻画结构与平滑性。
  • Eigen 源自德语 eigen,意为“自身的/固有的”;在数学里指特征值、特征向量(固有值/固有向量)。
  • maps 表示“映射”,强调把数据从一个空间映到另一个(通常更低维)空间。
  • Related Words / 相关词

    Notable Works / 文学与学术作品

    • Belkin & Niyogi:Laplacian Eigenmaps for Dimensionality Reduction and Data Representation(提出并系统阐述该方法的经典论文)
    • von Luxburg:A Tutorial on Spectral Clustering(谱聚类教程,常在相关背景中讨论与 Laplacian Eigenmaps 相近的谱思想)
    • Chapelle, Schlkopf, Zien(编):Semi-Supervised Learning(半监督学习经典书籍,相关章节常涉及图拉普拉斯与谱方法的思想与应用)
    关于     帮助文档     自助推广系统     博客     API     FAQ     Solana     2416 人在线   最高记录 6679       Select Language
    创意工作者们的社区
    World is powered by solitude
    VERSION: 3.9.8.5 44ms UTC 16:03 PVG 00:03 LAX 09:03 JFK 12:03
    Do have faith in what you're doing.
    ubao msn snddm index pchome yahoo rakuten mypaper meadowduck bidyahoo youbao zxmzxm asda bnvcg cvbfg dfscv mmhjk xxddc yybgb zznbn ccubao uaitu acv GXCV ET GDG YH FG BCVB FJFH CBRE CBC GDG ET54 WRWR RWER WREW WRWER RWER SDG EW SF DSFSF fbbs ubao fhd dfg ewr dg df ewwr ewwr et ruyut utut dfg fgd gdfgt etg dfgt dfgd ert4 gd fgg wr 235 wer3 we vsdf sdf gdf ert xcv sdf rwer hfd dfg cvb rwf afb dfh jgh bmn lgh rty gfds cxv xcv xcs vdas fdf fgd cv sdf tert sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf shasha9178 shasha9178 shasha9178 shasha9178 shasha9178 liflif2 liflif2 liflif2 liflif2 liflif2 liblib3 liblib3 liblib3 liblib3 liblib3 zhazha444 zhazha444 zhazha444 zhazha444 zhazha444 dende5 dende denden denden2 denden21 fenfen9 fenf619 fen619 fenfe9 fe619 sdf sdf sdf sdf sdf zhazh90 zhazh0 zhaa50 zha90 zh590 zho zhoz zhozh zhozho zhozho2 lislis lls95 lili95 lils5 liss9 sdf0ty987 sdft876 sdft9876 sdf09876 sd0t9876 sdf0ty98 sdf0976 sdf0ty986 sdf0ty96 sdf0t76 sdf0876 df0ty98 sf0t876 sd0ty76 sdy76 sdf76 sdf0t76 sdf0ty9 sdf0ty98 sdf0ty987 sdf0ty98 sdf6676 sdf876 sd876 sd876 sdf6 sdf6 sdf9876 sdf0t sdf06 sdf0ty9776 sdf0ty9776 sdf0ty76 sdf8876 sdf0t sd6 sdf06 s688876 sd688 sdf86