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| | =Chaos Work= | | =Chaos Work= |
| − | ==Binary Word Vector==
| + | [[SLT]] |
| − | ===Reproduce Nested Dropout===
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| − | Nested dropout method proposed by Rippel et. in their paper "Learning Ordered Representations with Nested Dropout", they proposed a dropout method which could learning ordered information in different dimensions.
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| − | ====Simple semi-linear autoencoder===
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| − | Their first draft work is semi-linear autoencoder, so I will reproduce this work.
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| − | And I will compare this work to PCA.
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| − | We only consider one hidden layer.
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| − | Start at 2015-07-02 20:00
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