A User Segmentation Method in Heterogeneous Open Innovation Communities Based on Multilayer Information Fusion and Attention Mechanisms
Abstract
:1. Introduction
- This study investigates the user segmentation problem in heterogeneous OICs and develops a hierarchical processing method to transform heterogeneous communities into multiple heterogeneous networks in an attempt to better distinguish and fuse network structure information and semantic information and improve the accuracy of community segmentation.
- This study extends the optimization function of the multi-objective Deep Graph Infomax (DGI) [31] algorithm to control the similarity of the community structures explored from different data sources; therefore, the effect of noise can be reduced. In addition, we combine the structural features of heterogeneous OICs with the semantic features of user nodes to accurately construct user node embeddings in a single-layer network.
- This study compares our method with multiple baseline methods based on unsupervised and supervised graph embedding techniques using a real-world dataset collected from OICs developed for business intelligence and analytics tools and stakeholders. Further ablation experiments were conducted to evaluate the effectiveness of different parts of the proposed method.
2. Related Works
2.1. Open Innovation Communities
2.2. User Segmentation in OICs
3. Proposed Method
3.1. User Node Embedding
3.2. Representation Fusion
3.3. Parameter Optimization
3.4. User Clustering
- The influence of user nodes is determined using the user node fusion representation.
- The obtained influence of user nodes is ranked in descending order, and the k user nodes with the highest influence are selected as the initial clustering centroids of the k-means algorithm.
- The k-means algorithm is iteratively applied until a stable user segmentation emerges.
3.5. Algorithm Description
Algorithm 1. User segmentation algorithm in heterogeneous OIC based on multilayer information and attention mechanisms. | |
Input: | OIC multi-heterogeneous network GMH = (V, E, F), number of network layers |R|>1, number of user communities k |
Output: | User segmentation result C = (C1, C2, …, CK) |
(1) | For each multi-heterogeneous network in layer r ∈ R network |
(2) | For each user node |
(3) | Obtain the user node embedding representation of at layer r using Equation (4) |
(4) | Obtain the layer weights of the user nodes using the layer-based semantic attention mechanism in Equation (5) |
(5) | Normalize the layer weights of user nodes using Equation (6) |
(6) | End for |
(7) | End for |
(8) | For each user node |
(9) | Obtain the fused embedding representation of the user node using Equation (7) |
(10) | Optimize the fused embedding representation of the user node using the objective function using Equation (9) |
(11) | End for |
(12) | Calculate the influence of user nodes and select the top k user nodes as the initial user community centers using Equation (10) |
(13) | Use k-means algorithm for user segmentation |
4. Experimental Analyses
4.1. Datasets
4.2. Evaluation Indicators
4.3. Baseline Methods
- (A)
- Unsupervised algorithms
- DeepWalk [61]: This method uses the Random-Walk strategy to obtain the node sequence; then, the Skip-Gram algorithm is used to obtain the node representations; finally, the objective function is optimized according to the hierarchical Softmax.
- Node2Vec [62]. This method is a more general abstract representation of the DeepWalk algorithm, which mainly improves the former Random-Walk strategy to obtain neighborhood information and more complex node dependencies.
- MetaPath2Vec [28]: This meta path-based method for embedding heterogeneous networks aims to deal with the heterogeneity of nodes. The MetaPath2Vec algorithm degenerates to the DeepWalk algorithm when there is only one node type in the network.
- CommDGI [63]: This method is an unsupervised learning algorithm based on mutual information for dealing with homogeneous networks.
- (B)
- Supervised algorithms
- GCN [30]: This method is a semi-supervised algorithm applied to node classification in homogeneous networks, which uses a convolution operation to merge the feature representation of neighbors into the node feature representation.
- GAT [64]: In this method, the attention mechanism is applied to homogeneous networks that require a supervised setup, and the algorithm learns node embeddings based on the local structure of the nodes.
- HAN [18]: This method uses node-level attention and semantic-level attention to capture information about all meta-paths.
5. Performance Analysis and Evaluation
6. Limitations and Directions for Future Research
7. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Datasets | Node Type | No. of Nodes | Edge Type | Network Layer Corresponding to Edge Type | No. of Edges |
---|---|---|---|---|---|
Power BI | User | 2460 | User viewing ideas | UVI | 84,853 |
Ideas | 33,660 | User contributing ideas | UCI | 64,843 | |
Tableau | User | 8556 | User viewing ideas | UVI | 49,439 |
Ideas | 81,633 | User contributing ideas | UCI | 22,751 | |
Qlik | User | 1129 | User contributing ideas | UVI | 69,108 |
Ideas | 29,034 | User contributing ideas | UCI | 33,853 | |
RapidMiner | User | 3908 | User viewing ideas | UVI | 59,482 |
Ideas | 30,502 | User contributing ideas | UCI | 32,761 |
Dataset | Power BI | Tableau | Qlik | RapidMiner | ||||
---|---|---|---|---|---|---|---|---|
Indicators | NMI | Sim@5 | NMI | Sim@5 | NMI | Sim@5 | NMI | Sim@5 |
DeepWalk | 0.082 | 0.725 | 0.116 | 0.491 | 0.347 | 0.627 | 0.312 | 0.702 |
Node2Vec | 0.073 | 0.737 | 0.122 | 0.486 | 0.381 | 0.626 | 0.308 | 0.711 |
MetaPath2Vec | 0.085 | 0.746 | 0.128 | 0.491 | 0.386 | 0.633 | 0.316 | 0.713 |
CommDGI | 0.006 | 0.556 | 0.182 | 0.577 | 0.552 | 0.784 | 0.642 | 0.887 |
GCN | 0.286 | 0.623 | 0.175 | 0.564 | 0.464 | 0.722 | 0.672 | 0.865 |
GAT | 0.302 | 0.631 | 0.182 | 0.551 | 0.467 | 0.724 | 0.665 | 0.871 |
HAN | 0.028 | 0.493 | 0.162 | 0.562 | 0.471 | 0.776 | 0.655 | 0.871 |
Our Method-Average Pooling | 0.342 | 0.743 | 0.187 | 0.602 | 0.556 | 0.774 | 0.683 | 0.874 |
Our Method | 0.345 | 0.754 | 0.195 | 0.606 | 0.564 | 0.788 | 0.692 | 0.899 |
Dataset | Power BI | |||
---|---|---|---|---|
Network Layer | UVI | UCI | ||
Indicators | NMI | Sim@5 | NMI | Sim@5 |
E | 0.002 | 0.395 | 0.003 | 0.414 |
E + R | 0.002 | 0.399 | 0.003 | 0.426 |
E + I | 0.152 | 0.512 | 0.143 | 0.512 |
E + I + J | 0.163 | 0.566 | 0.153 | 0.593 |
Dataset | Tableau | |||
Network Layer | UVI | UCI | ||
Indicators | NMI | Sim@5 | NMI | Sim@5 |
E | 0.547 | 0.801 | 0.087 | 0.493 |
E + R | 0.551 | 0.804 | 0.077 | 0.491 |
E + I | 0.512 | 0.802 | 0.144 | 0.524 |
E + I + J | 0.592 | 0.806 | 0.142 | 0.528 |
Dataset | Qlik | |||
Network Layer | UVI | UCI | ||
Indicators | NMI | Sim@5 | NMI | Sim@5 |
E | 0.526 | 0.626 | 0.651 | 0.812 |
E + R | 0.525 | 0.659 | 0.659 | 0.833 |
E + I | 0.527 | 0.728 | 0.655 | 0.872 |
E + I + J | 0.527 | 0.708 | 0.656 | 0.874 |
Dataset | RapidMiner | |||
Network Layer | UVI | UCI | ||
Indicators | NMI | Sim@5 | NMI | Sim@5 |
E | 0.403 | 0.730 | 0.053 | 0.543 |
E + R | 0.422 | 0.711 | 0.052 | 0.558 |
E + I | 0.403 | 0.711 | 0.052 | 0.559 |
E + I + J | 0.407 | 0.732 | 0.056 | 0.571 |
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Daradkeh, M. A User Segmentation Method in Heterogeneous Open Innovation Communities Based on Multilayer Information Fusion and Attention Mechanisms. J. Open Innov. Technol. Mark. Complex. 2022, 8, 186. https://doi.org/10.3390/joitmc8040186
Daradkeh M. A User Segmentation Method in Heterogeneous Open Innovation Communities Based on Multilayer Information Fusion and Attention Mechanisms. Journal of Open Innovation: Technology, Market, and Complexity. 2022; 8(4):186. https://doi.org/10.3390/joitmc8040186
Chicago/Turabian StyleDaradkeh, Mohammad. 2022. "A User Segmentation Method in Heterogeneous Open Innovation Communities Based on Multilayer Information Fusion and Attention Mechanisms" Journal of Open Innovation: Technology, Market, and Complexity 8, no. 4: 186. https://doi.org/10.3390/joitmc8040186
APA StyleDaradkeh, M. (2022). A User Segmentation Method in Heterogeneous Open Innovation Communities Based on Multilayer Information Fusion and Attention Mechanisms. Journal of Open Innovation: Technology, Market, and Complexity, 8(4), 186. https://doi.org/10.3390/joitmc8040186