Rapid and Precise Topological Comparison with Merge Tree Neural Networks.

Yu Qin, Brittany Terese Fasy, Carola Wenk, Brian Summa
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Abstract

Merge trees are a valuable tool in the scientific visualization of scalar fields; however, current methods for merge tree comparisons are computationally expensive, primarily due to the exhaustive matching between tree nodes. To address this challenge, we introduce the Merge Tree Neural Network (MTNN), a learned neural network model designed for merge tree comparison. The MTNN enables rapid and high-quality similarity computation. We first demonstrate how to train graph neural networks, which emerged as effective encoders for graphs, in order to produce embeddings of merge trees in vector spaces for efficient similarity comparison. Next, we formulate the novel MTNN model that further improves the similarity comparisons by integrating the tree and node embeddings with a new topological attention mechanism. We demonstrate the effectiveness of our model on real-world data in different domains and examine our model's generalizability across various datasets. Our experimental analysis demonstrates our approach's superiority in accuracy and efficiency. In particular, we speed up the prior state-of-the-art by more than 100× on the benchmark datasets while maintaining an error rate below 0.1%.

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利用合并树神经网络进行快速精确的拓扑比较。
合并树是标量领域科学可视化的重要工具;然而,目前的合并树比较方法计算成本高昂,这主要是由于树节点之间需要进行穷举匹配。为了应对这一挑战,我们引入了合并树神经网络(MTNN),这是一种专为合并树比较设计的学习型神经网络模型。MTNN 可以实现快速、高质量的相似性计算。我们首先演示了如何训练图神经网络(作为图的有效编码器出现),以便在向量空间中生成合并树的嵌入,从而实现高效的相似性比较。接下来,我们建立了新颖的 MTNN 模型,通过将树和节点嵌入与新的拓扑关注机制相结合,进一步改进了相似性比较。我们在不同领域的真实数据上演示了模型的有效性,并检验了模型在不同数据集上的通用性。我们的实验分析证明了我们的方法在准确性和效率方面的优势。特别是,在基准数据集上,我们的速度比先前的先进水平提高了 100 倍以上,而错误率却保持在 0.1% 以下。
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