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Evaluations Metric: Answer Similarity

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Created by: Jimleuk || jimleuk

Jimleuk

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Last update a month ago

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This n8n template demonstrates how to calculate the evaluation metric "Similarity" which in this scenario, measures the consistency of the agent.

The scoring approach is adapted from the open-source evaluations project RAGAS and you can see the source here https://github.com/explodinggradients/ragas/blob/main/ragas/src/ragas/metrics/_answer_similarity.py

How it works

  • This evaluation works best where questions are close-ended or about facts where the answer can have little to no deviation.
  • For our scoring, we generate embeddings for both the AI's response and ground truth and calculate the cosine similarity between them.
  • A high score indicates LLM consistency with expected results whereas a low score could signal model hallucination.

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