Difference between revisions of "Evaluation - Measures"
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* Error Metric - Predictive Modeling works on constructive feedback principle. You build a model. Get feedback from metrics, make improvements and continue until you achieve a desirable accuracy. Evaluation metrics explain the performance of a model. An important aspects of evaluation metrics is their capability to discriminate among model results. [http://www.analyticsvidhya.com/blog/2016/02/7-important-model-evaluation-error-metrics/ 7 Important Model Evaluation Error Metrics Everyone should know | Tavish Srivastava] | * Error Metric - Predictive Modeling works on constructive feedback principle. You build a model. Get feedback from metrics, make improvements and continue until you achieve a desirable accuracy. Evaluation metrics explain the performance of a model. An important aspects of evaluation metrics is their capability to discriminate among model results. [http://www.analyticsvidhya.com/blog/2016/02/7-important-model-evaluation-error-metrics/ 7 Important Model Evaluation Error Metrics Everyone should know | Tavish Srivastava] | ||
Revision as of 22:37, 24 June 2018
- Error Metric - Predictive Modeling works on constructive feedback principle. You build a model. Get feedback from metrics, make improvements and continue until you achieve a desirable accuracy. Evaluation metrics explain the performance of a model. An important aspects of evaluation metrics is their capability to discriminate among model results. 7 Important Model Evaluation Error Metrics Everyone should know | Tavish Srivastava
- Precision & Recall - (also called positive predictive value) is the fraction of relevant instances among the retrieved instances, while recall (also known as sensitivity) is the fraction of relevant instances that have been retrieved over the total amount of relevant instances. Both precision and recall are therefore based on an understanding and measure of relevance. Precision and recall | Wikipedia