注: 本翻訳は 本文 §1〜7 のみ を一文ずつ訳出する(ユーザーは appendix 指定なし)。Acknowledgments・References は対象外。図は ar5iv 原典から raw/assets/2018-bayesian-optimization-tutorial/ にローカル保存して該当位置に引用する。数式は LaTeX を保持。文献参照記号は省略。
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