291 lines
8.8 KiB
Markdown
291 lines
8.8 KiB
Markdown
# Phase R.3:动态权重增强
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日期:2026-04-03
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状态:已规划
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依赖:R.1(Token 感知分块)
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工作量:4.5 天
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---
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## 1. 本阶段目的
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根据查询特性动态调整检索策略,支持核心标签加权。
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---
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## 2. 核心任务
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### Task R.3.1:实现查询特性分析
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**目标:** 分析查询类型(代码/表格/对话式)
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**新增文件:** `backend/app/services/query_analyzer.py`
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```python
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import re
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from dataclasses import dataclass
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@dataclass
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class QueryProfile:
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logic_depth: float # 逻辑深度 (0-1): 意图明确程度
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is_code_related: bool # 是否代码相关
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is_table_related: bool # 是否表格相关
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keyword_density: float # 关键词密度
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is_conversational: bool # 是否对话式查询
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class QueryAnalyzer:
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CODE_KEYWORDS = {'code', 'function', 'class', 'api', 'python', 'js', 'bug', '函数', '代码'}
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TABLE_KEYWORDS = {'table', 'sheet', 'excel', 'csv', 'column', 'row', '数据', '统计', '表格', '列', '行'}
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def analyze(self, query: str) -> QueryProfile:
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words = set(re.findall(r'\w+', query.lower()))
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return QueryProfile(
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logic_depth=self._calc_logic_depth(query),
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is_code_related=bool(words & self.CODE_KEYWORDS),
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is_table_related=bool(words & self.TABLE_KEYWORDS),
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keyword_density=len(words) / max(len(query), 1),
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is_conversational=self._is_conversational(query),
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)
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def _calc_logic_depth(self, query: str) -> float:
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"""计算逻辑深度:问句、具体名词越多越聚焦"""
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question_markers = ['how', 'why', 'what', 'which', '哪个', '如何', '为什么', '怎么']
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has_question = any(q in query.lower() for q in question_markers)
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has_specific_terms = len(re.findall(r'\w{5,}', query)) > 3
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return 0.8 if (has_question and has_specific_terms) else 0.5
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def _is_conversational(self, query: str) -> bool:
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"""判断是否为对话式查询"""
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conversational_patterns = ['你', '我想', '能不能', '可以帮我', 'what do you think']
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return any(p in query for p in conversational_patterns)
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```
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---
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### Task R.3.2:实现动态 Reranker
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**目标:** 根据查询类型动态调整语义/关键词/标题权重
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**新增文件:** `backend/app/services/dynamic_reranker.py`
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```python
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import json
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from dataclasses import dataclass
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class DynamicReranker:
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"""动态 Reranker,根据查询特性调整权重"""
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def rerank(
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self,
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query: str,
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results: list[SearchResult],
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analyzer: QueryAnalyzer
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) -> list[SearchResult]:
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profile = analyzer.analyze(query)
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weights = self._get_weights(profile)
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beta = self._calc_beta(profile)
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scored = []
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for r in results:
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score = r.score * weights["semantic"]
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score += self._keyword_score(query, r.content) * weights["keyword"]
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score += self._title_score(query, r.document_title) * weights["title"]
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# 表格内容加分
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if profile.is_table_related:
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meta = json.loads(r.metadata_ or "{}")
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if meta.get("content_type") == "table_schema":
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score += 0.25
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elif meta.get("content_type") == "table_rows":
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score += 0.15
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score *= beta
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scored.append((score, r))
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scored.sort(key=lambda x: x[0], reverse=True)
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return [r for _, r in scored]
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def _get_weights(self, profile: QueryProfile) -> dict:
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if profile.is_code_related:
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return {"semantic": 0.55, "keyword": 0.35, "title": 0.10}
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elif profile.is_table_related:
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return {"semantic": 0.50, "keyword": 0.30, "title": 0.20}
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elif profile.is_conversational:
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return {"semantic": 0.85, "keyword": 0.10, "title": 0.05}
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else:
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return {"semantic": 0.70, "keyword": 0.20, "title": 0.10}
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def _calc_beta(self, profile: QueryProfile) -> float:
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"""计算动态 Beta:逻辑深度高时加大语义权重"""
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if profile.logic_depth > 0.7:
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return 1.2 # 意图明确,加大权重
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elif profile.logic_depth < 0.4:
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return 0.8 # 意图模糊,降低权重
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return 1.0
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```
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---
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### Task R.3.3:实现核心标签系统
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**目标:** 核心标签 1.33x 加权
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**新增文件:** `backend/app/services/core_tag_search.py`
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```python
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class CoreTagAwareSearch:
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"""核心标签感知检索"""
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CORE_BOOST_FACTOR = 1.33 # 33% 加权
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async def search(
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self,
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query: str,
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user_id: str,
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core_tags: list[str] = None,
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base_search_fn: callable
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) -> list[SearchResult]:
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results = await base_search_fn(query, user_id)
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if core_tags:
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for r in results:
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meta = json.loads(r.metadata_ or "{}")
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chunk_tags = meta.get("tags", [])
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if any(tag in chunk_tags for tag in core_tags):
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r.score *= self.CORE_BOOST_FACTOR
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return sorted(results, key=lambda x: x.score, reverse=True)
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```
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---
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## 3. 修改现有文件
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### `backend/app/models/document.py`
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增加 `tags` 和 `is_core` 字段:
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```python
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class DocumentChunk(Base):
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# ... existing fields ...
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tags = Column(JSON, default=list) # ["重要", "代码", "架构"]
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is_core = Column(Boolean, default=False) # 是否核心切片
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```
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---
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### `backend/app/services/knowledge_service.py`
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集成动态权重:
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```python
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from app.services.query_analyzer import QueryAnalyzer
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from app.services.dynamic_reranker import DynamicReranker
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from app.services.core_tag_search import CoreTagAwareSearch
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class KnowledgeService:
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def __init__(self, ...):
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# ... existing init
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self.query_analyzer = QueryAnalyzer()
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self.dynamic_reranker = DynamicReranker()
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self.core_tag_search = CoreTagAwareSearch()
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async def retrieve(self, query: str, user_id: str, ..., core_tags: list[str] = None) -> list[SearchResult]:
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# ... existing retrieval logic ...
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# 动态 Rerank
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results = self.dynamic_reranker.rerank(
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query, results, self.query_analyzer
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)
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# 核心标签加权
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if core_tags:
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results = await self.core_tag_search.search(
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query, user_id, core_tags,
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lambda q, u: results # 使用已检索的结果
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)
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return results
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```
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---
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## 4. 新增测试
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**新增文件:** `backend/tests/services/test_dynamic_reranker.py`
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```python
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import pytest
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from app.services.query_analyzer import QueryAnalyzer, QueryProfile
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from app.services.dynamic_reranker import DynamicReranker
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class TestQueryAnalyzer:
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def test_code_query_detection(self):
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analyzer = QueryAnalyzer()
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profile = analyzer.analyze("请解释这段 Python 代码")
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assert profile.is_code_related is True
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def test_table_query_detection(self):
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analyzer = QueryAnalyzer()
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profile = analyzer.analyze("统计这个 Excel 表格的总和")
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assert profile.is_table_related is True
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def test_conversational_detection(self):
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analyzer = QueryAnalyzer()
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profile = analyzer.analyze("我想了解一下")
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assert profile.is_conversational is True
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class TestDynamicReranker:
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def test_code_query_weights(self):
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reranker = DynamicReranker()
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analyzer = QueryAnalyzer()
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profile = QueryProfile(
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logic_depth=0.5,
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is_code_related=True,
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is_table_related=False,
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keyword_density=0.3,
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is_conversational=False
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)
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weights = reranker._get_weights(profile)
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assert weights["keyword"] > weights["semantic"] * 0.5 # 代码查询关键词权重较高
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```
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---
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## 5. 验收标准
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- [ ] 查询特性分析准确(代码/表格/对话式识别)
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- [ ] 动态权重根据查询类型调整
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- [ ] 核心标签检索加权 1.33x
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- [ ] Rerank 集成测试通过
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---
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## 6. 变更文件清单
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| 文件 | 操作 | 说明 |
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|------|------|------|
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| `backend/app/services/query_analyzer.py` | 新增 | 查询特性分析 |
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| `backend/app/services/dynamic_reranker.py` | 新增 | 动态 Reranker |
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| `backend/app/services/core_tag_search.py` | 新增 | 核心标签检索 |
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| `backend/app/services/knowledge_service.py` | 修改 | 集成动态权重 |
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| `backend/app/models/document.py` | 修改 | 增加 tags/is_core 字段 |
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| `backend/tests/services/test_dynamic_reranker.py` | 新增 | 动态 Reranker 测试 |
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---
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## 7. 工作量估算
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| 任务 | 估算 |
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|------|------|
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| R.3.1 查询特性分析 | 1 天 |
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| R.3.2 动态 Reranker | 1 天 |
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| R.3.3 核心标签系统 | 1 天 |
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| 测试 + 调试 | 1.5 天 |
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| **R.3 总计** | **4.5 天** |
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