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@@ -13,7 +13,7 @@ SciBERT text classification model for positive and negative results prediction i
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  ## Data
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  We annotated over 1,900 abstracts into two categories: 'positive results only' and 'mixed and negative results', and trained models using SciBERT.
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- The SciBERT model was validated against one in-domain and two out-of-domain data sets comprising psychotherapy abstracts. We compared model performance with three benchmarks: natural language indicators of result types, *p*-values, and abstract length. Further information on documentation, code and data for the project "Publication Bias Research in Clincial Psychology Using Natural Language Processing" can be found on the Github repository [PubBiasDetect](https://github.com/PsyCapsLock/PubBiasDetect).
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  ## Using the Model on Huggingface
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  The model can be used on Hugginface utilizing the "Hosted inference API" in the window on the right.
 
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  ## Data
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  We annotated over 1,900 abstracts into two categories: 'positive results only' and 'mixed and negative results', and trained models using SciBERT.
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+ The SciBERT model was validated against one in-domain and two out-of-domain data sets comprising psychotherapy abstracts. We compared model performance with Random Forest and three further benchmarks: natural language indicators of result types, *p*-values, and abstract length. Further information on documentation, code and data for the project "Publication Bias Research in Clincial Psychology Using Natural Language Processing" can be found on the Github repository [PubBiasDetect](https://github.com/PsyCapsLock/PubBiasDetect).
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  ## Using the Model on Huggingface
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  The model can be used on Hugginface utilizing the "Hosted inference API" in the window on the right.