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Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 6 Model evaluation
<p>This data release component contains evaluation metrics used to assess the predictive performance of each stream temperature model. For further description, see the metric calculations in the supplement of Rahmani et al. (2020), equations S1-S7.</p>
Complete Metadata
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"fn": "Farshid Rahmani",
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|
| description | <p>This data release component contains evaluation metrics used to assess the predictive performance of each stream temperature model. For further description, see the metric calculations in the supplement of Rahmani et al. (2020), equations S1-S7.</p> |
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| identifier | http://datainventory.doi.gov/id/dataset/USGS_5f9865fbd34e198cb77ff08c |
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|
| modified | 2020-12-09T00:00:00Z |
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| spatial | -123.32988684, 30.1454932, -70.97964444, 48.90595739 |
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| title | Exploring the exceptional performance of a deep learning stream temperature model and the value of streamflow data: 6 Model evaluation |