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Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday, April 17, 2009
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Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Jan 18, 2018

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Standard online learning VS. Online Manifold Regularization Both of them are long-life learning and learn non-iid sequentially; Standard online learning: traditionally assumes that every input point is fully labeled, it cannot take advantage of unlabeled data; Online MR: it learns even when the input point is unlabeled.
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Page 1: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Online Manifold Regularization: A New Learning Setting and Empirical Study

Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008).

Hu EnLiang Friday, April 17, 2009

Page 2: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 3: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Standard online learning VS. Online Manifold Regularization Both of them are long-life learning and learn

non-iid sequentially;

Standard online learning: traditionally assumes that every input point is fully labeled, it cannot take advantage of unlabeled data;

Online MR: it learns even when the input point is unlabeled.

Page 4: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Online MR VS. batch MR (advantages) Online MR scales better than batch MR in time and

space;

Online MR achieves comparable performance to batch MR;

Online MR can handle concept drift;

Online MR is an “anytime classifier”, which continuously is being improved and its training is cheap.

Page 5: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

The principle of online MR

Page 6: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 7: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 8: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

The relationship of batch risk, instantaneous regularized risk and average instantaneous risk

Page 9: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 10: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 11: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

How to accelerate online MR

Page 12: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 13: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 14: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 15: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 16: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 17: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 18: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 19: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 20: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Continue !!!

Page 21: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

A Brief Introduction to CBIR(Content-based Image

Retrieval)

Hu en liang

Tuesday, April 08, 2008

Page 22: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Background:Content-based Image Retrieval

Properties: Querying image according to user’s semantic-co

ncepts. Querying images according to image’s contents,

such as: color, texture, shape, etc.

Hypothesis——similar contents means semantic affinity;

‘Semantic gap’——semantic affinity doesn't means similar contents.

Page 23: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

A prototype of feedback-based CBIR

Page 24: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 25: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 26: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,
Page 27: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Background: The Difficulty of ‘Semantic Gap’ Key problems:

1. How to extract user’s semantic-concept (intention)?2. How to bridge between content and semantic ?

Main methods:

1. Machine learning based RF (Relevance-Feedback); 2. The prior knowledge such as the historical logs.

Page 28: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

How to Connect CBIR to ML? (Semi-)supervised Metric Learning;

Manifold Learning, Dimension Reduction…

(Semi-)supervised Classification;

Active Learning; Co-training;

Assembling Classifier;

Ranking; …

Page 29: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Some Individual Characteristics for feedback-based CBIR In contrast to typical ML, there are some special

characteristics for RF-CBIR :

The problem of the small size sample;

The problem of asymmetrical training sample;

The online algorithm with real-time requirement;

Page 30: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Manifold Regularization (MR)

Manifold regularization: a geometric framework for learning from labeled and unlabeled examples. Mikhail Belkin, Partha Niyogi, Vikas Sindhwani. Journal of machine Learning Research 7, pp 2399-2434, 2006

Page 31: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

To Modify MR for CBIR There are some intrinsic characteristics for CBIR :

The problem of the small size sample; The problem of asymmetrical training sample; The online algorithm with real-time requirement;

The (1+x)-manifolds hypothesis There only single submanifold for positive clas

s, but multi-submanifolds for negative class!

Page 32: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Negative manifold

positive manifold

The Problem of MR for the Multi-Submanifolds Case

Page 33: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

The Bias-MR Focusing on Single-Submanifold

Page 34: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

A review of LapSVM

Page 35: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

A review of LapSVM

O(l3) O(n3)O(n3)

Page 36: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

A higher efficiency in BLapSVM

O(q3

)

Page 37: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

The BLapSVM Algorithm for CBIR

Page 38: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

The ‘BEP’ Performance Chart

Page 39: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

The ‘Efficiency’ Performance Chart

Page 40: Online Manifold Regularization: A New Learning Setting and Empirical Study Andrew B. Goldberg, Ming Li, and Xiaojin Zhu.(ECML PKDD, 2008). Hu EnLiang Friday,

Thanks for Your

Attention !