Photometric Redshifts for Hyper Suprime-Cam Subaru Strategic Program Data Release 1
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Satoshi Miyazaki | Hitoshi Murayama | Hisanori Furusawa | Sogo Mineo | Jean Coupon | Bau-Ching Hsieh | H. Murayama | Masayuki Tanaka | J. Coupon | J. Speagle | S. Miyazaki | B. Hsieh | H. Furusawa | A. Nishizawa | S. Mineo | Atsushi J. Nishizawa | Masayuki Tanaka | Joshua Speagle
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