V2EX contrastive loss

Contrastive Loss

释义 Definition

对比损失(contrastive loss):一种常用于度量学习对比学习的损失函数,用来让模型在表示空间中拉近“相似/正样本对”的距离、并推远“不相似/负样本对”的距离,从而学到更有区分度的向量表示。(不同论文/实现会有变体,如基于边际 margin、基于温度 temperature 的形式等。)

发音 Pronunciation (IPA)

/kntrstv ls/

例句 Examples

We trained the model with contrastive loss to group similar images together.
我们用对比损失训练模型,让相似的图像在特征空间中聚到一起。

By minimizing contrastive loss over many augmented views, the network learns representations that stay close for positive pairs while separating hard negatives.
通过在大量数据增强视角上最小化对比损失,网络学到的表示会让正样本对更接近,同时把难负样本拉开距离。

词源 Etymology

contrastive 来自 contrast(对比、形成对照),强调“通过对照来区分”;loss 在机器学习里指“损失函数/优化目标”。合起来就是“用对照关系来构造优化目标的损失函数,核心思想是用“相似 vs. 不相似”的成对比较来塑造表示空间。

相关词 Related Words

文献与作品 Literary / Notable Works

  • Hadsell, Chopra, LeCun (2006), Dimensionality Reduction by Learning an Invariant Mapping(早期经典的对比损失/孪生网络思路)
  • Oord, Li, Vinyals (2018), Representation Learning with Contrastive Predictive Coding(提出并推广 InfoNCE 等对比目标)
  • Chen et al. (2020), *A Simple Framework for Contrastive Learning of Visual Representations (SimCLR)*(视觉自监督对比学习代表作)
  • He et al. (2020), *Momentum Contrast for Unsupervised Visual Representation Learning (MoCo)*(用动量编码器改进对比学习)
  • Radford et al. (2021), *Learning Transferable Visual Models From Natural Language Supervision (CLIP)*(大规模图文对比目标带动应用)
关于     帮助文档     自助推广系统     博客     API     FAQ     Solana     2699 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 49ms UTC 03:57 PVG 11:57 LAX 20:57 JFK 23:57
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