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Tatikonda, Raviteja; Ganguli, Rajive (2025) Predictive Summary Model—a Domain-Guided Approach to Generate Informative Summaries. Mining, Metallurgy & Exploration, 42 (5). doi:10.1007/s42461-025-01316-y

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Reference TypeJournal (article/letter/editorial)
TitlePredictive Summary Model—a Domain-Guided Approach to Generate Informative Summaries
JournalMining, Metallurgy & Exploration
AuthorsTatikonda, RavitejaAuthor
Ganguli, RajiveAuthor
Year2025 (October)Volume42
Issue5
PublisherSpringer Science and Business Media LLC
DOIdoi:10.1007/s42461-025-01316-ySearch in ResearchGate
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Mindat Ref. ID19087982Long-form Identifiermindat:1:5:19087982:4
GUID0
Full ReferenceTatikonda, Raviteja; Ganguli, Rajive (2025) Predictive Summary Model—a Domain-Guided Approach to Generate Informative Summaries. Mining, Metallurgy & Exploration, 42 (5). doi:10.1007/s42461-025-01316-y
Plain TextTatikonda, Raviteja; Ganguli, Rajive (2025) Predictive Summary Model—a Domain-Guided Approach to Generate Informative Summaries. Mining, Metallurgy & Exploration, 42 (5). doi:10.1007/s42461-025-01316-y
In(2025, October) Mining, Metallurgy & Exploration Vol. 42 (5). Springer Science and Business Media LLC

References Listed

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