<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom"><channel><title>Xindi Wei | UCSC OSPO</title><link>https://ucsc-ospo.netlify.app/author/xindi-wei/</link><atom:link href="https://ucsc-ospo.netlify.app/author/xindi-wei/index.xml" rel="self" type="application/rss+xml"/><description>Xindi Wei</description><generator>Wowchemy (https://wowchemy.com)</generator><language>en-us</language><lastBuildDate>Thu, 18 Jun 2026 00:00:00 +0000</lastBuildDate><image><url>https://ucsc-ospo.netlify.app/media/logo_hub6795c39d7c5d58c9535d13299c9651f_74810_300x300_fit_lanczos_3.png</url><title>Xindi Wei</title><link>https://ucsc-ospo.netlify.app/author/xindi-wei/</link></image><item><title>StaR</title><link>https://ucsc-ospo.netlify.app/report/osre26/uci/star/xindi-wei/</link><pubDate>Thu, 18 Jun 2026 00:00:00 +0000</pubDate><guid>https://ucsc-ospo.netlify.app/report/osre26/uci/star/xindi-wei/</guid><description>&lt;p>Hey there, I&amp;rsquo;m Xindi Wei. I&amp;rsquo;ll be contributing to the StaR project under the mentorship of &lt;a href="https://ucsc-ospo.github.io/author/ziheng-duan/" target="_blank">
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Ziheng Duan
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&lt;h1 id="what-is-the-project-about">What is the project about?&lt;/h1>
&lt;p>In spatial transcriptomics, spatial domain identification is a fundamental task aimed at partitioning tissue sections into biologically coherent regions. State-of-the-art Graph Neural Network (GNN) methods have advanced this task significantly, but they share a critical limitation: extreme sensitivity to random initialization.
When evaluating these methods across 1,000 random seeds, several key issues emerge:&lt;/p>
&lt;p>(1)The Adjusted Rand Index (ARI) fluctuates drastically, with the worst-to-best gap reaching up to 0.396.
(2)This seed-induced variance often exceeds the performance differences between competing methods.
(3)Evaluating the same method with different seeds can lead to entirely contradictory conclusions about its utility.&lt;/p>
&lt;p>The goal of this project is to develop StaR, a plug-in training framework designed to steer models toward flatter, more reproducible parameter regions, thereby mitigating this extreme seed sensitivity without altering the underlying encoder architecture.&lt;/p>
&lt;h1 id="what-do-i-plan-on-doing">What do I plan on doing?&lt;/h1>
&lt;p>The central contribution of this project is the development of StaR, a framework designed to eliminate multi-basin behavior and enforce spatial consistency. My action items to achieve this involve a structural overhaul of the training objective and comprehensive empirical validation:&lt;/p>
&lt;p>(1)Implement a Deterministic Spatial Prior
(2)Integrate KL Regularization
(3)Apply Advanced Optimization Techniques
(4)Conduct Comprehensive Benchmarking and Mechanistic Proofs&lt;/p>
&lt;h1 id="starpdf">StaR.pdf&lt;/h1>
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👉 StaR.pdf
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