Mercurial > ift6266
comparison writeup/nips_rebuttal_clean.txt @ 574:d12b9a1432e8
cleaned-up version, fewer typos, shortened (but need 700 chars less)
author | Dumitru Erhan <dumitru.erhan@gmail.com> |
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date | Sat, 07 Aug 2010 18:39:36 -0700 |
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children | bff9ab360ef4 |
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1 Reviewer_1 claims that handwriting recognition is essentially solved, and we | |
2 believe that this is not true. Indeed, the best methods have been | |
3 getting essentially human performance in the case of clean digits. We are not | |
4 aware of previous papers showing that human performance has been reached on the | |
5 full character set. Furthermore, it is clear from our own experimentation that | |
6 humans still greatly outperform machines when the characters are heavily | |
7 distorted (e.g. the NISTP dataset). Playing with the provided demo will | |
8 quickly convince you that this is true. | |
9 | |
10 "...not intended to compete with the state-of-the-art...": We actually included | |
11 comparisons with the state-of-the-art on the NIST dataset (and beat it). | |
12 | |
13 "the demonstrations that self-taught learning can help deep learners is | |
14 helpful": indeed, but it is even more interesting to consider the result that | |
15 self-taught learning was found *more helpful for deep learners than for shallow | |
16 ones*. Since the availability of out-of-distribution data is common (especially | |
17 out-of-class data), this is of practical importance. | |
18 | |
19 Reviewer_4: "It would also be interesting to compare to SVMs...": ordinary SVMs cannot be | |
20 used on such large datasets, and indeed it is a good idea to explore variants of | |
21 SVMs or approximations of SVMs. We will continue exploring this thread (and the | |
22 particular suggestion made) and hope to include these results in the final | |
23 paper, to add more shallow learners to the comparison. | |
24 | |
25 "...it would be helpful to provide some theoretical analysis...": indeed, but | |
26 this is either mathematically challenging (to say the least, since deep models | |
27 involve a non-convex optimization) or would likely require very strong | |
28 assumptions on the data distribution. However, there exists | |
29 theoretical literature which answers some basic questions about this issue, | |
30 starting with the work of Jonathan Baxter (COLT 1995) "Learning internal | |
31 representations". The argument is about capacity | |
32 and sharing it across tasks so as to achieve better generalization. The lower | |
33 layers implement features that can potentially be shared across tasks. As long | |
34 as some sharing is possible (because the same features can be useful for several | |
35 tasks), then there is a potential benefit from shared | |
36 internal representations. Whereas a one-hidden-layer MLP can only share linear | |
37 features, a deep architecture can share non-linear ones which have the potential | |
38 for representing more abstract concepts. | |
39 | |
40 Reviewer_5 about semi-supervised learning: In the unsupervised phase, no labels | |
41 are used. In the supervised fine-tuning phase, all labels are used, so this is | |
42 not the semi-supervised setting. This paper did not examine the potential | |
43 advantage of exploiting large quantities of additional unlabeled data, but the | |
44 availability of the generated dataset and of the learning setup would make it | |
45 possible to easily conduct a study to answer this interesting | |
46 question. Note however that previous work [5] already investigated the relative | |
47 advantage of the semi-supervised setting for deep vs shallow architectures, | |
48 which is why we did not focus on this here. It might still be worth to do these | |
49 experiments because the deep learning algorithms were different. | |
50 | |
51 "...human errors may be present...": Indeed, there are variations across human | |
52 labelings, which have have estimated (since each character | |
53 was viewed by 3 different humans), and reported in the paper (the standard | |
54 deviations across humans are large, but the standard error across a large test | |
55 set is very small, so we believe the average error numbers to be fairly | |
56 accurate). | |
57 | |
58 "...authors do cite a supplement, but I did not have access to it...": that is | |
59 strange. We could (and still can) access it from the CMT web site. We will make | |
60 sure to include a complete pseudo-code of SDAs in it. | |
61 | |
62 "...main contributions of the manuscript...": the main | |
63 contribution is actually to show that the self-taught learning setting is more | |
64 beneficial to deeper architectures. | |
65 | |
66 "...restriction to MLPs...": that restriction was motivated by the computational | |
67 challenge of training on hundreds of millions of examples. Apart from linear | |
68 models (which do not fare well on this task), it is not clear to us what | |
69 could be used, and so MLPs were the | |
70 obvious candidates to compare with. We will explore the use of SVM | |
71 approximations, as suggested by Reviewer_1. Other suggestions are welcome. | |
72 | |
73 "Reviewer 6:...novelty [..] is somewhat marginal since [...] reminiscent of | |
74 prior work on character recognition using deformations and transformations". | |
75 The main originality is in showing that deep learners can take more advantage | |
76 than shallow learners of such data and of the self-taught learning framework in | |
77 general. | |
78 |