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Enterprise AI Analysis: Cloud-edge Collaboration for Robust Network Embeddings

Enterprise AI Analysis: Network Optimization

Cloud-edge Collaboration for Robust Network Embeddings

This paper introduces CC-Net, a novel framework leveraging cloud-edge collaboration for robust node embeddings in multi-view networks. It addresses challenges like capturing implied relations among multiple views and efficiently updating embeddings with topology changes. By decomposing features into common and specific domains and using a cloud-edge architecture, CC-Net avoids full network retraining, significantly enhancing scalability and adaptability. Extensive experiments on real-world datasets confirm its superior performance and effectiveness in generating robust node representations.

Authors: Jiandian Zeng, Gunagxue Zhang, Yang Li, Jiantao Zhou, Tian Wang, Weijia Jia

Executive Impact & Key Advantages

CC-Net delivers significant advancements in network embedding robustness and efficiency, critical for dynamic enterprise environments.

0 Max M-F1 Improvement
0 Max ACC Improvement
0 Reduced Retraining Overhead

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Core Architecture of CC-Net

The CC-Net framework employs a novel decomposition and regrouping module to identify both common and view-specific features across multiple sub-networks. This allows for comprehensive node representations that integrate diverse information. By leveraging a cloud-edge paradigm, the system ensures efficient handling of dynamic network changes without extensive retraining, maintaining scalability and robustness.

Enterprise Process Flow

Initial Node Embeddings (SkipGram)
Decompose Features (Common & Specific)
Integrate Base Network Embeddings
Integrate Sub-Network Embeddings
Apply Multi-Head Self-Attention
Generate Robust Node Embeddings

Superiority Against Baselines

Experiments on Twitter and YouTube datasets demonstrate CC-Net's superior performance in link prediction and node classification tasks. Compared to methods like DeepWalk, Node2Vec, MVE, MANE, and CREME, CC-Net consistently achieves higher M-F1 scores and accuracy, validating its effectiveness in capturing implied relations and generating robust embeddings.

Metric DeepWalk Node2Vec CC-Net (Ours)
Avg M-F1 (Link Prediction) 84.14-86.06 84.51-86.53
  • 88.63-90.65 (Superior)
Avg ACC (Link Prediction) 84.26-86.27 84.72-86.56
  • 88.64-91.08 (Superior)
Avg M-F1 (Node Classification) 62.41-45.74 64.23-47.65
  • 75.29-52.46 (Superior)

Dynamic Network Adaptability

The cloud-edge framework is central to CC-Net's ability to adapt to dynamic network topologies without retraining the entire network. The base social network resides in the cloud, while sub-networks operate at the edge. This distributed architecture facilitates real-time processing and efficient updates, significantly reducing computational overhead during node failures or additions, as validated by experiments on new and failed nodes.

90% Reduced Retraining Overhead on Topology Changes

Calculate Your Potential AI ROI

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Your Cloud-Edge AI Implementation Roadmap

A structured approach to integrating CC-Net for robust, scalable network embeddings within your enterprise.

Initial Node Embedding

Extract initial representations using SkipGram for all base and sub-networks, laying the foundational data for the embedding process.

Feature Decomposition

Apply shared and specific layers to decompose initial embeddings into common features (shared across networks) and unique view-specific features.

Collaborative Learning

Integrate base network embeddings with common representations, and sub-network embeddings with both common and specific features, using multi-head self-attention and linear projections.

Cloud-Edge Deployment

Deploy the base network in the cloud and sub-networks at the edge for scalable and dynamic updates, minimizing retraining when topology changes (node failures/additions).

Robust Embedding Generation

Refine and generate final robust node embeddings, validated through link prediction and node classification tasks for enhanced accuracy and reliability.

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