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[DL輪読会]Boosting Domain Adaptation by Discovering Latent Domains
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2018/05/18 Deep Learning JP: http://deeplearning.jp/seminar-2/
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[DL輪読会]Boosting Domain Adaptation by Discovering Latent Domains
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DEEP LEARNING JP [DL
Papers] http://deeplearning.jp/ Boosting Domain Adaptation by Discovering Latent Domains (CVPR 2018) Jun Hozumi, Matsuo Lab
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ドメイン未知なソースのサンプル集合
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• ˆ • • ˆ • 分類 ドメイン予測 m:
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