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Neural Architecture Retrieval: Efficient Graph Representation Learning for Neural Architectures


Alapfogalmak
Efficiently retrieve similar neural architectures using graph representation learning.
Kivonat
The content introduces the problem of Neural Architecture Retrieval (NAR) to efficiently find similar neural architectures. It proposes a new framework for graph representation learning that considers motifs in neural architectures. Extensive evaluations show the superiority of the proposed algorithm over baselines, leading to the creation of a dataset with 12k real-world network architectures.
Statisztikák
"Extensive evaluations on both human-designed and synthesized neural architectures demonstrate the superiority of our algorithm." "A new dataset with 12k real-world network architectures is built for neural architecture retrieval."
Idézetek

Főbb Kivonatok

by Xiaohuan Pei... : arxiv.org 03-19-2024

https://arxiv.org/pdf/2307.07919.pdf
Neural Architecture Retrieval

Mélyebb kérdések

How can the proposed graph representation learning framework be applied to other domains beyond computer vision

The proposed graph representation learning framework can be applied to other domains beyond computer vision by adapting the methodology to suit the specific characteristics of those domains. For example, in natural language processing (NLP), the computational graphs could represent text sequences or language models instead of image features. By identifying motifs in NLP architectures, such as recurrent neural networks or transformer models, the framework can capture repeated patterns and design elements that contribute to model performance. This approach can help researchers retrieve similar NLP architectures efficiently and accurately.

What potential challenges might arise when scaling up this approach to larger datasets or more complex neural architectures

Scaling up this approach to larger datasets or more complex neural architectures may present several challenges: Computational Complexity: As the dataset size increases, processing large graphs and motifs becomes computationally intensive. Efficient algorithms and parallel computing techniques may be required to handle the increased workload. Model Generalization: Ensuring that the learned representations generalize well across diverse architectures is crucial for effective retrieval. Complex structures or highly specialized designs may pose challenges in capturing meaningful embeddings. Data Quality: Larger datasets often come with noise and inconsistencies that can affect the quality of learned representations. Robust preprocessing steps and data cleaning procedures are essential for accurate results. Interpretability: With more complex architectures, interpreting how motifs contribute to overall architecture similarity becomes challenging. Developing methods for visualizing and understanding motif-based representations will be important.

How can motifs-based graph representation learning benefit tasks beyond architecture retrieval

Motifs-based graph representation learning can benefit tasks beyond architecture retrieval by providing insights into structural similarities between different systems or entities: Biological Networks: In bioinformatics, motifs-based graph representation learning can help analyze biological networks like protein-protein interactions or gene regulatory networks. Identifying recurring patterns in these networks could reveal functional relationships between biomolecules. Social Network Analysis: Understanding social network structures is vital in sociology and marketing research. Motifs-based analysis could uncover common interaction patterns within social networks, leading to better community detection or targeted advertising strategies. 3Financial Systems Modeling: Analyzing financial systems using motifs-based graph representation learning could identify key components within complex economic networks like stock markets or banking systems. By applying motifs-based approaches across various domains, researchers can gain valuable insights into underlying structural similarities among diverse systems, leading to improved decision-making processes and system optimizations based on shared architectural principles."
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