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Cohesive Subgraph Search Over Large Heterogeneous Information NetworksFuture Work and Conclusion

Cohesive Subgraph Search Over Large Heterogeneous Information Networks: Future Work and Conclusion [Although much research effort has been devoted to CSS over large HINs over the past several decades, there are still many issues that are not well addressed, thus there is still much room to perform further study on CSS over large HINs in the future, from the perspectives of effective CSMs, computational efficiency, parameter optimization, tools, etc. In this chapter, we discuss several important future research directions about CSS over HINs, including novel application-driven CSMs, efficient search algorithms, parameter optimization, and an online repository for collecting HIN datasets, tools, and algorithm codes, which can provide researchers some good starting points to work in this area. In addition, we draw a brief conclusion for the book.] http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png

Cohesive Subgraph Search Over Large Heterogeneous Information NetworksFuture Work and Conclusion

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Publisher
Springer International Publishing
Copyright
© The Author(s), under exclusive license to Springer Nature Switzerland AG 2022
ISBN
978-3-030-97567-8
Pages
61 –63
DOI
10.1007/978-3-030-97568-5_7
Publisher site
See Chapter on Publisher Site

Abstract

[Although much research effort has been devoted to CSS over large HINs over the past several decades, there are still many issues that are not well addressed, thus there is still much room to perform further study on CSS over large HINs in the future, from the perspectives of effective CSMs, computational efficiency, parameter optimization, tools, etc. In this chapter, we discuss several important future research directions about CSS over HINs, including novel application-driven CSMs, efficient search algorithms, parameter optimization, and an online repository for collecting HIN datasets, tools, and algorithm codes, which can provide researchers some good starting points to work in this area. In addition, we draw a brief conclusion for the book.]

Published: Feb 23, 2022

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