Akujuobi, 2020 - Google Patents
Learning from Scholarly Attributed Graphs for Scientific DiscoveryAkujuobi, 2020
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- 13079413849786823031
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- Akujuobi U
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Research and experimentation in various scientific fields are based on the knowledge and ideas from scholarly literature. The advancement of research and development has, thus, strengthened the importance of literary analysis and understanding. However, in recent …
- 238000011160 research 0 abstract description 63
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