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194 lines
8.0 KiB
Python
194 lines
8.0 KiB
Python
# SPDX-FileCopyrightText: 2022-present deepset GmbH <info@deepset.ai>
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#
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# SPDX-License-Identifier: Apache-2.0
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from math import log2
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from typing import Any
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from haystack import Document, component, default_to_dict
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@component
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class DocumentNDCGEvaluator:
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"""
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Evaluator that calculates the normalized discounted cumulative gain (NDCG) of retrieved documents.
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Each question can have multiple ground truth documents and multiple retrieved documents.
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If the ground truth documents have relevance scores, the NDCG calculation uses these scores.
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Otherwise, it assumes binary relevance of all ground truth documents.
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Usage example:
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```python
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from haystack import Document
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from haystack.components.evaluators import DocumentNDCGEvaluator
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evaluator = DocumentNDCGEvaluator()
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result = evaluator.run(
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ground_truth_documents=[[Document(content="France", score=1.0), Document(content="Paris", score=0.5)]],
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retrieved_documents=[[Document(content="France"), Document(content="Germany"), Document(content="Paris")]],
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)
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print(result["individual_scores"])
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# [0.8869]
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print(result["score"])
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# 0.8869
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```
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"""
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def __init__(self, document_comparison_field: str = "content") -> None:
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"""
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Create a DocumentNDCGEvaluator component.
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:param document_comparison_field:
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The Document field to use for comparison. Possible options:
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- `"content"`: uses `doc.content`
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- `"id"`: uses `doc.id`
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- A `meta.` prefix followed by a key name: uses `doc.meta["<key>"]`
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(e.g. `"meta.file_id"`, `"meta.page_number"`)
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Nested keys are supported (e.g. `"meta.source.url"`).
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"""
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self.document_comparison_field = document_comparison_field
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def _get_comparison_value(self, doc: Document) -> Any:
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"""
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Extract the comparison value from a document based on the configured field.
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"""
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if self.document_comparison_field == "content":
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return doc.content
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if self.document_comparison_field == "id":
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return doc.id
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if self.document_comparison_field.startswith("meta."):
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parts = self.document_comparison_field[5:].split(".")
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value = doc.meta
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for part in parts:
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if not isinstance(value, dict) or part not in value:
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return None
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value = value[part]
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return value
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msg = (
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f"Unsupported document_comparison_field: '{self.document_comparison_field}'. "
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"Use 'content', 'id', or 'meta.<key>'."
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)
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raise ValueError(msg)
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def to_dict(self) -> dict[str, Any]:
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"""
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Serializes the component to a dictionary.
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:returns:
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Dictionary with serialized data.
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"""
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return default_to_dict(self, document_comparison_field=self.document_comparison_field)
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@component.output_types(score=float, individual_scores=list[float])
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def run(
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self, ground_truth_documents: list[list[Document]], retrieved_documents: list[list[Document]]
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) -> dict[str, Any]:
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"""
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Run the DocumentNDCGEvaluator on the given inputs.
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`ground_truth_documents` and `retrieved_documents` must have the same length.
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The list items within `ground_truth_documents` and `retrieved_documents` can differ in length.
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:param ground_truth_documents:
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Lists of expected documents, one list per question. Binary relevance is used if documents have no scores.
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:param retrieved_documents:
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Lists of retrieved documents, one list per question.
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:returns:
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A dictionary with the following outputs:
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- `score` - The average of calculated scores.
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- `individual_scores` - A list of numbers from 0.0 to 1.0 that represents the NDCG for each question.
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"""
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self.validate_inputs(ground_truth_documents, retrieved_documents)
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individual_scores = []
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for gt_docs, ret_docs in zip(ground_truth_documents, retrieved_documents, strict=True):
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dcg = self.calculate_dcg(gt_docs, ret_docs)
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idcg = self.calculate_idcg(gt_docs)
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ndcg = dcg / idcg if idcg > 0 else 0
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individual_scores.append(ndcg)
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score = sum(individual_scores) / len(ground_truth_documents)
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return {"score": score, "individual_scores": individual_scores}
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@staticmethod
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def validate_inputs(gt_docs: list[list[Document]], ret_docs: list[list[Document]]) -> None:
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"""
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Validate the input parameters.
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:param gt_docs:
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The ground_truth_documents to validate.
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:param ret_docs:
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The retrieved_documents to validate.
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:raises ValueError:
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If the ground_truth_documents or the retrieved_documents are an empty list.
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If the length of ground_truth_documents and retrieved_documents differs.
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If any list of documents in ground_truth_documents contains a mix of documents with and without a score.
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"""
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if len(gt_docs) == 0 or len(ret_docs) == 0:
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msg = "ground_truth_documents and retrieved_documents must be provided."
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raise ValueError(msg)
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if len(gt_docs) != len(ret_docs):
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msg = "The length of ground_truth_documents and retrieved_documents must be the same."
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raise ValueError(msg)
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for docs in gt_docs:
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if any(doc.score is not None for doc in docs) and any(doc.score is None for doc in docs):
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msg = "Either none or all documents in each list of ground_truth_documents must have a score."
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raise ValueError(msg)
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def calculate_dcg(self, gt_docs: list[Document], ret_docs: list[Document]) -> float:
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"""
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Calculate the discounted cumulative gain (DCG) of the retrieved documents.
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:param gt_docs:
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The ground truth documents.
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:param ret_docs:
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The retrieved documents.
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:returns:
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The discounted cumulative gain (DCG) of the retrieved
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documents based on the ground truth documents.
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"""
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dcg = 0.0
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# Build lookup from comparison value -> relevance score, skipping documents
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# whose comparison value cannot be determined (e.g. missing meta key)
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relevant_value_to_score: dict[Any, float] = {}
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for doc in gt_docs:
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value = self._get_comparison_value(doc)
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if value is not None:
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relevant_value_to_score[value] = doc.score if doc.score is not None else 1
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for i, doc in enumerate(ret_docs):
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value = self._get_comparison_value(doc)
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if value is not None and value in relevant_value_to_score:
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dcg += relevant_value_to_score[value] / log2(i + 2) # i + 2 because i is 0-indexed
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return dcg
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def calculate_idcg(self, gt_docs: list[Document]) -> float:
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"""
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Calculate the ideal discounted cumulative gain (IDCG) of the ground truth documents.
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Ground truth documents whose comparison value cannot be determined (e.g. missing meta key)
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are excluded, since they can never be matched in `calculate_dcg` either. Including them here
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would inflate the IDCG and make it impossible for NDCG to reach 1.0 for a perfect retrieval.
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:param gt_docs:
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The ground truth documents.
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:returns:
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The ideal discounted cumulative gain (IDCG) of the ground truth documents.
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"""
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# Filter out documents that cannot be matched, consistent with calculate_dcg
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matchable_docs = [doc for doc in gt_docs if self._get_comparison_value(doc) is not None]
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idcg = 0.0
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for i, doc in enumerate(
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sorted(matchable_docs, key=lambda x: x.score if x.score is not None else 1, reverse=True)
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):
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# If the document has a score, use it; otherwise, use 1 for binary relevance.
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relevance = doc.score if doc.score is not None else 1
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idcg += relevance / log2(i + 2) # i + 2 because i is 0-indexed
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return idcg
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