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- """
- 查找 Pattern Tool - 从 pattern 库中获取符合条件概率阈值的 pattern
- 功能:读取账号的 pattern 库,合并去重后按条件概率筛选,返回 topN 条 pattern(含 pattern 名称、条件概率)。
- """
- import json
- import sys
- from pathlib import Path
- from typing import Any, Optional
- # 保证直接运行或作为包加载时都能解析 utils / tools(IDE 可跳转)
- _root = Path(__file__).resolve().parent.parent
- if str(_root) not in sys.path:
- sys.path.insert(0, str(_root))
- from utils.conditional_ratio_calc import calc_pattern_conditional_ratio
- from tools.point_match import _load_match_data, match_derivation_to_post_points
- try:
- from agent.tools import tool, ToolResult, ToolContext
- except ImportError:
- def tool(*args, **kwargs):
- return lambda f: f
- ToolResult = None # 仅用 main() 测核心逻辑时可无 agent
- ToolContext = None
- # 与 pattern_data_process 一致的 key 定义
- TOP_KEYS = [
- "depth_max_with_name",
- "depth_mixed",
- "depth_max_concrete",
- "depth2_medium",
- "depth1_abstract",
- ]
- SUB_KEYS = ["two_x", "one_x", "zero_x"]
- _BASE_INPUT = Path(__file__).resolve().parent.parent / "input"
- def _pattern_file(account_name: str) -> Path:
- """pattern 库文件:../input/{account_name}/原始数据/pattern/processed_edge_data.json"""
- return _BASE_INPUT / account_name / "原始数据" / "pattern" / "processed_edge_data.json"
- def _slim_pattern(p: dict) -> tuple[float, int, list[str], int]:
- """提取 name 列表(去重保序)、support、length、post_count。"""
- names = [item["name"] for item in (p.get("items") or [])]
- seen = set()
- unique = []
- for n in names:
- if n not in seen:
- seen.add(n)
- unique.append(n)
- support = round(float(p.get("support", 0)), 4)
- length = int(p.get("length", 0))
- post_count = int(p.get("post_count", 0))
- return support, length, unique, post_count
- def _merge_and_dedupe(patterns: list[dict]) -> list[dict]:
- """
- 按 items 的 name 集合去重(不区分顺序),留 support 最大;
- 输出格式保留 s、l、i(nameA+nameB+nameC)及 post_count,供条件概率计算使用。
- """
- key_to_best: dict[tuple, tuple[float, int, int]] = {}
- for p in patterns:
- support, length, unique, post_count = _slim_pattern(p)
- if not unique:
- continue
- key = tuple(sorted(unique))
- if key not in key_to_best or support > key_to_best[key][0]:
- key_to_best[key] = (support, length, post_count)
- out = []
- for k, (s, l, post_count) in key_to_best.items():
- if s < 0.1:
- continue
- out.append({
- "s": s,
- "l": l,
- "i": "+".join(k),
- "post_count": post_count,
- })
- out.sort(key=lambda x: x["s"] * x["l"], reverse=True)
- return out
- def _load_and_merge_patterns(account_name: str) -> list[dict]:
- """读取 pattern 库 JSON,按 TOP_KEYS/SUB_KEYS 合并为列表并做合并、去重。"""
- path = _pattern_file(account_name)
- if not path.is_file():
- return []
- with open(path, "r", encoding="utf-8") as f:
- data = json.load(f)
- all_patterns = []
- for top in TOP_KEYS:
- if top not in data:
- continue
- block = data[top]
- for sub in SUB_KEYS:
- all_patterns.extend(block.get(sub) or [])
- return _merge_and_dedupe(all_patterns)
- def _parse_derived_list(derived_items: list[dict[str, str]]) -> list[tuple[str, str]]:
- """将 agent 传入的 [{"topic": "x", "source_node": "y"}, ...] 转为 DerivedItem 列表。"""
- out = []
- for item in derived_items:
- if isinstance(item, dict):
- topic = item.get("topic") or item.get("已推导的选题点")
- source = item.get("source_node") or item.get("推导来源人设树节点")
- if topic is not None and source is not None:
- out.append((str(topic).strip(), str(source).strip()))
- elif isinstance(item, (list, tuple)) and len(item) >= 2:
- out.append((str(item[0]).strip(), str(item[1]).strip()))
- return out
- def get_patterns_by_conditional_ratio(
- account_name: str,
- derived_list: list[tuple[str, str]],
- conditional_ratio_threshold: float,
- top_n: int,
- post_id: str = "",
- ) -> list[dict[str, Any]]:
- """
- 从 pattern 库中获取条件概率 >= 阈值的 pattern,按以下优先级排序后返回 top_n 条:
- 1. pattern 元素中直接包含已推导选题点(topic)的排最前;
- 2. pattern 元素与任意已推导选题点的匹配分 >= 0.8 的次之(从 match_data 文件读取,
- key 为 (帖子选题点, 人设树节点),pattern 元素视为人设树节点);
- 3. 按条件概率降序;
- 4. 按 length 降序。
- derived_list 为空时,条件概率使用 pattern 自身的 support(s)。
- 返回每项:pattern名称(nameA+nameB+nameC)、条件概率。
- """
- merged = _load_and_merge_patterns(account_name)
- print(f"_load_and_merge_patterns,patterns: {len(merged)}")
- if not merged:
- return []
- base_dir = _BASE_INPUT
- scored: list[tuple[dict, float]] = []
- if not derived_list:
- # derived_items 为空:条件概率取 pattern 本身的 support (s)
- for p in merged:
- ratio = float(p.get("s", 0))
- if ratio >= conditional_ratio_threshold:
- scored.append((p, ratio))
- else:
- for p in merged:
- ratio = calc_pattern_conditional_ratio(
- account_name, derived_list, p, base_dir=base_dir
- )
- if ratio >= conditional_ratio_threshold:
- scored.append((p, ratio))
- derived_topics = {topic for topic, _ in derived_list} if derived_list else set()
- # 次优先:从 match_data 文件加载 (帖子选题点, 人设树节点) -> 匹配分,
- # 用已推导选题点(topic)作为帖子选题点,pattern 元素作为人设树节点,
- # 检查是否存在匹配分 >= 0.8 的组合。
- match_lookup: dict[tuple[str, str], float] = {}
- if derived_topics and post_id:
- match_lookup = _load_match_data(account_name, post_id)
- def _sort_key(x: tuple[dict, float]) -> tuple:
- p, ratio = x
- elements = set(p["i"].split("+"))
- has_derived = bool(elements & derived_topics)
- has_high_match = False
- if not has_derived and match_lookup:
- for elem in elements:
- for dt in derived_topics:
- if match_lookup.get((dt, elem), 0.0) >= 0.8:
- has_high_match = True
- break
- if has_high_match:
- break
- return (not has_derived, not has_high_match, -ratio, -p["l"])
- scored.sort(key=_sort_key)
- result = []
- for p, ratio in scored[:top_n]:
- result.append({
- "pattern名称": p["i"],
- "条件概率": round(ratio, 6),
- })
- return result
- @tool(
- description="按条件概率从 pattern 库中筛选 pattern,优先返回包含已推导选题点的 pattern,并检查每个 pattern 的元素是否与帖子选题点匹配。"
- "功能:根据账号与已推导选题点(可选),筛选条件概率不低于阈值的 pattern;当 derived_items 非空时,优先返回 pattern 元素中包含已推导选题点的 pattern;同时对每个 pattern 的所有元素做帖子选题点匹配,匹配结果直接包含在返回数据中。"
- "参数:account_name 为账号名;post_id 为帖子ID,用于加载帖子选题点并做匹配判断;derived_items 为已推导选题点列表,每项含 topic(或已推导的选题点)与 source_node(或推导来源人设树节点),可为空,为空时条件概率使用 pattern 自身的 support;conditional_ratio_threshold 为条件概率阈值;top_n 为返回条数上限,默认 100。"
- "返回:ToolResult,output 为可读的 pattern 列表文本,metadata.items 为列表,每项含「pattern名称」(nameA+nameB+nameC 形式)、「条件概率」、「帖子选题点匹配」=无/匹配结果(无匹配时为「无」,有匹配时为匹配列表,每项含 pattern元素、帖子选题点与匹配分数)。"
- )
- async def find_pattern(
- account_name: str,
- post_id: str,
- derived_items: list[dict[str, str]],
- conditional_ratio_threshold: float,
- top_n: int = 100,
- context: Optional[ToolContext] = None,
- ) -> ToolResult:
- """
- 按条件概率阈值从 pattern 库筛选 pattern,返回最多 top_n 条(按条件概率降序)。
- 当 derived_items 非空时,优先返回元素中包含已推导选题点的 pattern。
- 返回前对每个 pattern 的所有元素做帖子选题点匹配,匹配结果直接包含在返回数据中。
- 参数
- -------
- account_name : 账号名,用于定位该账号的 pattern 库。
- post_id : 帖子ID,用于加载帖子选题点并与 pattern 元素做匹配判断。
- derived_items : 已推导选题点列表,可为空。非空时每项为字典,需含 topic(或「已推导的选题点」)与 source_node(或「推导来源人设树节点」);为空时各 pattern 的条件概率取其自身 support。
- conditional_ratio_threshold : 条件概率阈值,仅返回条件概率 >= 该值的 pattern。
- top_n : 返回条数上限,默认 100。
- context : 可选,Agent 工具上下文。
- 返回
- -------
- ToolResult:
- - title: 结果标题。
- - output: 可读的 pattern 列表文本(每行:pattern名称、条件概率、帖子匹配情况)。
- - metadata: 含 account_name、conditional_ratio_threshold、top_n、count、items;
- items 为列表,每项为 {"pattern名称": str, "条件概率": float,
- "帖子选题点匹配": 无匹配时为 "无",有匹配时为 list[{"pattern元素", "帖子选题点", "匹配分数"}]}。
- - 出错时 error 为错误信息。
- """
- pattern_path = _pattern_file(account_name)
- if not pattern_path.is_file():
- return ToolResult(
- title="Pattern 库不存在",
- output=f"pattern 文件不存在: {pattern_path}",
- error="Pattern file not found",
- )
- try:
- derived_list = _parse_derived_list(derived_items or [])
- items = get_patterns_by_conditional_ratio(
- account_name, derived_list, conditional_ratio_threshold, top_n, post_id
- )
- # 批量收集所有 pattern 元素,统一做一次帖子选题点匹配
- if items and post_id:
- all_elements: list[str] = []
- seen_elements: set[str] = set()
- for item in items:
- for elem in item["pattern名称"].split("+"):
- elem = elem.strip()
- if elem and elem not in seen_elements:
- all_elements.append(elem)
- seen_elements.add(elem)
- matched_results = await match_derivation_to_post_points(all_elements, account_name, post_id)
- elem_match_map: dict[str, list] = {}
- for m in matched_results:
- elem_match_map.setdefault(m["推导选题点"], []).append({
- "帖子选题点": m["帖子选题点"],
- "匹配分数": m["匹配分数"],
- })
- for item in items:
- pattern_matches = []
- for elem in item["pattern名称"].split("+"):
- elem = elem.strip()
- for post_match in elem_match_map.get(elem, []):
- pattern_matches.append({
- "pattern元素": elem,
- "帖子选题点": post_match["帖子选题点"],
- "匹配分数": post_match["匹配分数"],
- })
- # 仅当 pattern 元素匹配到至少 2 个不同帖子选题点时才返回匹配信息,否则为无
- distinct_post_points = len({m["帖子选题点"] for m in pattern_matches})
- item["帖子选题点匹配"] = (
- pattern_matches if distinct_post_points >= 2 else "无"
- )
- # [临时] 仅保留有帖子选题点匹配的记录(distinct_post_points>=2),方便后续删除
- items = [x for x in items if isinstance(x.get("帖子选题点匹配"), list)]
- if not items:
- output = f"未找到条件概率 >= {conditional_ratio_threshold} 的 pattern"
- else:
- lines = []
- for x in items:
- match_info = x.get("帖子选题点匹配", "无")
- if isinstance(match_info, list):
- match_str = "、".join(
- f"{m['pattern元素']}→{m['帖子选题点']}({m['匹配分数']})" for m in match_info
- )
- else:
- match_str = str(match_info)
- lines.append(f"- {x['pattern名称']}\t条件概率={x['条件概率']}\t帖子选题点匹配={match_str}")
- output = "\n".join(lines)
- return ToolResult(
- title=f"符合条件概率的 Pattern ({account_name}, 阈值={conditional_ratio_threshold})",
- output=output,
- metadata={
- "account_name": account_name,
- "conditional_ratio_threshold": conditional_ratio_threshold,
- "top_n": top_n,
- "count": len(items),
- },
- )
- except Exception as e:
- return ToolResult(
- title="查找 Pattern 失败",
- output=str(e),
- error=str(e),
- )
- def main() -> None:
- """本地测试:用家有大志账号、已推导选题点,查询符合条件概率阈值的 pattern(含帖子匹配)。"""
- import asyncio
- account_name = "家有大志"
- post_id = "68fb6a5c000000000302e5de"
- # 已推导选题点,每项:已推导的选题点 + 推导来源人设树节点
- # derived_items = [
- # {"topic": "分享", "source_node": "分享"},
- # {"topic": "植入方式", "source_node": "植入方式"},
- # {"topic": "叙事结构", "source_node": "叙事结构"},
- # ]
- derived_items = derived_items = [{"source_node":"分享","topic":"分享"},{"source_node":"叙事结构","topic":"叙事结构"},{"source_node":"图片文字","topic":"图片文字"},{"source_node":"补充说明式","topic":"补充说明式"},{"source_node":"幽默化标题","topic":"幽默化标题"},{"source_node":"标题","topic":"标题"}]
- conditional_ratio_threshold = 0.01
- top_n = 2000
- # 1)直接调用核心函数(不含帖子匹配,仅验证排序逻辑)
- # derived_list = _parse_derived_list(derived_items)
- # items = get_patterns_by_conditional_ratio(
- # account_name, derived_list, conditional_ratio_threshold, top_n, post_id
- # )
- # print(f"账号: {account_name}, 阈值: {conditional_ratio_threshold}, top_n: {top_n}")
- # print(f"共 {len(items)} 条 pattern:\n")
- # for x in items:
- # print(f" - {x['pattern名称']}\t条件概率={x['条件概率']}")
- # 2)有 agent 时通过 tool 接口再跑一遍(含帖子选题点匹配)
- if ToolResult is not None:
- async def run_tool():
- result = await find_pattern(
- account_name=account_name,
- post_id=post_id,
- derived_items=derived_items,
- conditional_ratio_threshold=conditional_ratio_threshold,
- top_n=top_n,
- )
- print("\n--- Tool 返回 ---")
- print(result.output)
- asyncio.run(run_tool())
- if __name__ == "__main__":
- main()
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