https://kylrth.com/tags/simulation/Recent content in simulation on Kyle RothHugo -- gohugo.ioen-usFri, 25 Mar 2022 14:46:11 -0400https://kylrth.com/paper/neural-message-passing/Fri, 25 Mar 2022 14:46:11 -0400https://kylrth.com/paper/neural-message-passing/This post was created as an assignment in Bang Liu’s IFT6289 course in winter 2022. The structure of the post follows the structure of the assignment: summarization followed by my own comments. To summarize, the authors create a unifying framework for describing message-passing neural networks, which they apply to the problem of predicting the structural properties of chemical compounds in the QM9 dataset. paper summarization The authors first demonstrate that many of the recent works applying neural nets to this problem can fit into a message-passing neural network (MPNN) framework.
This XML file does not appear to have any style information associated with it. The document tree is shown below.
<rss xmlns:atom="http://www.w3.org/2005/Atom" version="2.0">
<channel>
<title>simulation on Kyle Roth</title>
<link>https://kylrth.com/tags/simulation/</link>
<description>Recent content in simulation on Kyle Roth</description>
<generator>Hugo -- gohugo.io</generator>
<language>en-us</language>
<lastBuildDate>Fri, 25 Mar 2022 14:46:11 -0400</lastBuildDate>
<atom:link href="https://kylrth.com/tags/simulation/index.xml" rel="self" type="application/rss+xml"/>
<item>
<title>Neural message passing for quantum chemistry</title>
<link>https://kylrth.com/paper/neural-message-passing/</link>
<pubDate>Fri, 25 Mar 2022 14:46:11 -0400</pubDate>
<guid>https://kylrth.com/paper/neural-message-passing/</guid>
<description>This post was created as an assignment in Bang Liu&rsquo;s IFT6289 course in winter 2022. The structure of the post follows the structure of the assignment: summarization followed by my own comments. To summarize, the authors create a unifying framework for describing message-passing neural networks, which they apply to the problem of predicting the structural properties of chemical compounds in the QM9 dataset. paper summarization The authors first demonstrate that many of the recent works applying neural nets to this problem can fit into a message-passing neural network (MPNN) framework.</description>
</item>
</channel>
</rss>