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Displaying 2 of about 2 resultsThe disaster risk reduction status report provides a snapshot of the state of disaster risk reduction in the Kingdom of Tonga under the four priorities of the Sendai Framework for Disaster Risk Reduction 2015-2030. It also highlights progress and challenges associated with ensuring coherence with key global frameworks and provides recommendations for st…
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... 14.721056 <= sum of:
... ... 14.721056 <= weight(tm_X3b_en_saa_field_attachment:lidar in 11472) [SchemaSimilarity], result of:
... ... ... 14.721056 <= score(freq=1.0), computed as boost * idf * tf from:
... ... ... ... 8.000000 <= boost
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... ... ... ... ... 7936.000000 <= N, total number of documents with field
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... ... ... ... ... 1.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 10264.000000 <= dl, length of field (approximate)
... ... ... ... ... 19499.460000 <= avgdl, average length of field
... 1.000000 <= float(boost_document)=1.0
… can be de- ployed to acquire data including InSAR and other satellite data, drone, LiDAR, and sensor technol- ogies, among others. Knowledge gaps in the re- gion, …
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... ... ... 9.280647 <= score(freq=1.0), computed as boost * idf * tf from:
... ... ... ... 8.000000 <= boost
... ... ... ... 3.263909 <= idf, computed as log(1 + (N - n + 0.5) / (n + 0.5)) from:
... ... ... ... ... 303.000000 <= n, number of documents containing term
... ... ... ... ... 7936.000000 <= N, total number of documents with field
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... ... ... ... ... 1.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 32792.000000 <= dl, length of field (approximate)
... ... ... ... ... 19499.460000 <= avgdl, average length of field
... 1.000000 <= float(boost_document)=1.0