机器学习任务的state-of-art之github及个人总结
2017-11-21 14:32
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前言
深度神经网络其实更加适合做感知,而贝叶斯理论的核心是推理,只有从感知到推理才能到决策。所以最终来讲,你希望达到一种理性的推理、理性的决策,这里面正好是贝叶斯网络一个大行其道的地方—余凯1. State-of-the-art result for all Machine Learning Problems
https://github.com/RedditSota/state-of-the-art-result-for-machine-learning-problems2. Google Research
https://research.googleblog.com/3. paperWeekly
http://www.paperweekly.site/collections/10/papers相关文章推荐
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