Mercurial > ift6266
comparison writeup/aistats_review_response.txt @ 623:d44c78c90669
entered revisions for AMT and SVMs
author | Yoshua Bengio <bengioy@iro.umontreal.ca> |
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date | Sun, 09 Jan 2011 22:00:39 -0500 |
parents | 5c67f674d724 |
children | 49933073590c |
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622:09b7dee216f4 | 623:d44c78c90669 |
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26 Linear SVM, NISTP, 800k, original, 88.50%, 85.24%, 87.36% | 26 Linear SVM, NISTP, 800k, original, 88.50%, 85.24%, 87.36% |
27 Linear SVM, NISTP, 800k, sparse quadratic, 81.76%, 83.69%, 85.56% | 27 Linear SVM, NISTP, 800k, sparse quadratic, 81.76%, 83.69%, 85.56% |
28 RBF SVM, NISTP, 100k, original, 74.73%, 56.57%, 64.22% | 28 RBF SVM, NISTP, 100k, original, 74.73%, 56.57%, 64.22% |
29 | 29 |
30 The best results were obtained with the sparse quadratic input features, and | 30 The best results were obtained with the sparse quadratic input features, and |
31 training on the CLEAN data (NIST) rather than the perturbed data (NISTP). | 31 training on the CLEAN data (NIST) rather than the perturbed data (NISTP). |
32 A summary of the above results was added to the revised paper. | |
32 | 33 |
33 | 34 |
34 * Using distorted characters as the corruption process of the Denoising | 35 * Using distorted characters as the corruption process of the Denoising |
35 Auto-Encoder (DAE). We had already performed preliminary experiments with this idea | 36 Auto-Encoder (DAE). We had already performed preliminary experiments with this idea |
36 and it did not work very well (in fact it depends on the kind of distortion | 37 and it did not work very well (in fact it depends on the kind of distortion |
57 complete (10 predictions) (3) discarding responses for which for which the | 58 complete (10 predictions) (3) discarding responses for which for which the |
58 time to predict was smaller than 3 seconds for NIST (the mean response time | 59 time to predict was smaller than 3 seconds for NIST (the mean response time |
59 was 20 seconds) and 6 seconds seconds for NISTP (average response time of | 60 was 20 seconds) and 6 seconds seconds for NISTP (average response time of |
60 45 seconds) (4) discarding responses which were obviously wrong (10 | 61 45 seconds) (4) discarding responses which were obviously wrong (10 |
61 identical ones, or "12345..."). Overall, after such filtering, we kept | 62 identical ones, or "12345..."). Overall, after such filtering, we kept |
62 approximately 95% of the AMT workers' responses. We thank the reviewer for | 63 approximately 95% of the AMT workers' responses. The above paragraph |
64 was added to the revision. We thank the reviewer for | |
63 the suggestion about multi-stage questionnaires, we will definitely | 65 the suggestion about multi-stage questionnaires, we will definitely |
64 consider this as an option next time we perform this experiment. However, | 66 consider this as an option next time we perform this experiment. However, |
65 to be fair, if we were to do so, we should also consider the same | 67 to be fair, if we were to do so, we should also consider the same |
66 multi-stage decision process for the machine learning algorithms as well. | 68 multi-stage decision process for the machine learning algorithms as well. |
67 | 69 |