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wiki:autolit:screening:inclusionpredictionmodel [2023/09/27 17:25] kevinkallmes [Testing out the model] |
wiki:autolit:screening:inclusionpredictionmodel [2024/03/06 02:43] kevinkallmes |
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The Screening Model uses AI to learn from screening decisions within a specific nest, predicting inclusion (standard screening) or abstract advancement (two pass screening) probabilities based on configuration. Then it automatically re-orders studies in Screening so that the most likely to be included/ | The Screening Model uses AI to learn from screening decisions within a specific nest, predicting inclusion (standard screening) or abstract advancement (two pass screening) probabilities based on configuration. Then it automatically re-orders studies in Screening so that the most likely to be included/ | ||
- | It also works to power [[: | + | ===== Robot Screener ===== |
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+ | The Screening Model can be used to power AI-assisted screening, replacing one expert in Dual Screening processes: | ||
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+ | {{youtube> | ||
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+ | See here for full [[: | ||
===== User Guide ===== | ===== User Guide ===== | ||
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You can see the accuracy in the modal after the model is trained. In the Cross Validation tab, several statistics are shown. Scores of Recall and Accuracy can be used to interpret how the model will perform on the remaining records. High recall (0.7/70%+) indicates that the model will less frequently exclude relevant records, meaning higher performance. Similarly, accuracy indicates how correct the model' | You can see the accuracy in the modal after the model is trained. In the Cross Validation tab, several statistics are shown. Scores of Recall and Accuracy can be used to interpret how the model will perform on the remaining records. High recall (0.7/70%+) indicates that the model will less frequently exclude relevant records, meaning higher performance. Similarly, accuracy indicates how correct the model' | ||
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==== Implications for Screening ==== | ==== Implications for Screening ==== | ||
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Often some of this data will be missing for records; it is imputed as if the record is approximately typical to other records in the nest. | Often some of this data will be missing for records; it is imputed as if the record is approximately typical to other records in the nest. | ||
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