データマイニングや機械学習をやるときによく問題となる「リーケージ」を防ぐ方法について論じた論文「Leakage in Data Mining: Formulation, Detecting, and Avoidance」(Kaufman, Shachar, et al., ACM Transactions on Knowledge Discovery from Data (TKDD) 6.4 (2012): 1-21.)を解説します。
主な内容は以下のとおりです。
?過去に起きたリーケージの事例の紹介
?リーケージを防ぐための2つの考え方
?リーケージの発見
?リーケージの修正
This document discusses generative adversarial networks (GANs) and their relationship to reinforcement learning. It begins with an introduction to GANs, explaining how they can generate images without explicitly defining a probability distribution by using an adversarial training process. The second half discusses how GANs are related to actor-critic models and inverse reinforcement learning in reinforcement learning. It explains how GANs can be viewed as training a generator to fool a discriminator, similar to how policies are trained in reinforcement learning.
研究室の輪講で使った古いスライド。物体検出の黎明期からシングルショット系までのまとめ。
Old slides used in a lab lecture. A summary of object detection from its early days to single-shot systems.
フォント不足による表示崩れがあります(筑紫A丸ゴシック、Montserratを使用)。
This document discusses generative adversarial networks (GANs) and their relationship to reinforcement learning. It begins with an introduction to GANs, explaining how they can generate images without explicitly defining a probability distribution by using an adversarial training process. The second half discusses how GANs are related to actor-critic models and inverse reinforcement learning in reinforcement learning. It explains how GANs can be viewed as training a generator to fool a discriminator, similar to how policies are trained in reinforcement learning.
研究室の輪講で使った古いスライド。物体検出の黎明期からシングルショット系までのまとめ。
Old slides used in a lab lecture. A summary of object detection from its early days to single-shot systems.
フォント不足による表示崩れがあります(筑紫A丸ゴシック、Montserratを使用)。