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- #!/usr/bin/env python3
- """
- 生成推导可视化数据。
- 输入参数:account_name, post_id, log_id
- - 从 input/{account_name}/解构内容/{post_id}.json 解析选题点列表
- - 从 output/{account_name}/推导日志/{post_id}/{log_id}/ 读取推导与评估 JSON,生成:
- 1. output/{account_name}/整体推导结果/{post_id}.json
- 2. output/{account_name}/整体推导路径可视化/{post_id}.json
- """
- import argparse
- import json
- import re
- from pathlib import Path
- from typing import Any
- def _collect_dimension_names(point_data: dict) -> dict[str, str]:
- """从点的 实质/形式/意图 中收集 名称 -> dimension。"""
- name_to_dim = {}
- if "实质" in point_data and point_data["实质"]:
- for key in ("具体元素", "具象概念", "抽象概念"):
- for item in (point_data["实质"].get(key) or []):
- n = item.get("名称")
- if n:
- name_to_dim[n] = "实质"
- if "形式" in point_data and point_data["形式"]:
- for key in ("具体元素形式", "具象概念形式", "整体形式"):
- for item in (point_data["形式"].get(key) or []):
- n = item.get("名称")
- if n:
- name_to_dim[n] = "形式"
- if point_data.get("意图"):
- for item in point_data["意图"]:
- n = item.get("名称")
- if n:
- name_to_dim[n] = "意图"
- return name_to_dim
- def parse_topic_points_from_deconstruct(deconstruct_path: Path) -> list[dict[str, Any]]:
- """
- 从 input/{account_name}/解构内容/{post_id}.json 解析选题点列表。
- 选题点来自分词结果中的「词」,字段:name, point, dimension, root_source, root_sources_desc。
- """
- if not deconstruct_path.exists():
- raise FileNotFoundError(f"解构内容文件不存在: {deconstruct_path}")
- with open(deconstruct_path, "r", encoding="utf-8") as f:
- data = json.load(f)
- result = []
- for point_type in ("灵感点", "目的点", "关键点"):
- for point in data.get(point_type) or []:
- root_source = point.get("点", "")
- root_sources_desc = point.get("点描述", "")
- name_to_dim = _collect_dimension_names(point)
- for word_item in point.get("分词结果") or []:
- name = word_item.get("词", "").strip()
- if not name:
- continue
- dimension = name_to_dim.get(name, "实质")
- result.append({
- "name": name,
- "point": point_type,
- "dimension": dimension,
- "root_source": root_source,
- "root_sources_desc": root_sources_desc,
- })
- return result
- def _topic_point_key(t: dict) -> tuple:
- return (t["name"], t["point"], t["dimension"])
- def load_derivation_logs(log_dir: Path) -> tuple[list[dict], list[dict]]:
- """
- 从 output/{account_name}/推导日志/{post_id}/{log_id}/ 读取所有 {轮次}_推导.json 与 {轮次}_评估.json。
- 返回 (推导列表按轮次序, 评估列表按轮次序)。
- """
- if not log_dir.is_dir():
- raise FileNotFoundError(f"推导日志目录不存在: {log_dir}")
- derivation_by_round = {}
- eval_by_round = {}
- for p in log_dir.glob("*.json"):
- base = p.stem
- m = re.match(r"^(\d+)_(推导|评估)$", base)
- if not m:
- continue
- round_num = int(m.group(1))
- with open(p, "r", encoding="utf-8") as f:
- content = json.load(f)
- if m.group(2) == "推导":
- derivation_by_round[round_num] = content
- else:
- eval_by_round[round_num] = content
- rounds = sorted(set(derivation_by_round) | set(eval_by_round))
- derivations = [derivation_by_round[r] for r in rounds if r in derivation_by_round]
- evals = [eval_by_round[r] for r in rounds if r in eval_by_round]
- return derivations, evals
- def build_derivation_result(
- topic_points: list[dict],
- derivations: list[dict],
- evals: list[dict],
- ) -> list[dict]:
- """
- 生成整体推导结果:每轮 轮次、推导成功的选题点、未推导成功的选题点、本次新推导成功的选题点。
- 选题点用 topic_points 中的完整信息;按 name 判定是否被推导(评估中的 match_post_point)。
- 若之前推导成功的选题点 is_fully_derived=false,本轮变为 is_fully_derived=true,则算本次新推导成功的选题点,
- 且 matched_score、is_fully_derived 在本轮后更新为该轮评估值。
- 推导成功的选题点:使用当前已更新的 best (matched_score, is_fully_derived)。
- 本次新推导成功的选题点:用当轮评估的 matched_score、is_fully_derived。
- 未推导成功的选题点:不包含 matched_score、is_fully_derived。
- """
- all_keys = {_topic_point_key(t) for t in topic_points}
- topic_by_key = {_topic_point_key(t): t for t in topic_points}
- # 分轮次收集 (round_num, name) -> (matched_score, is_fully_derived),同一轮同名取首次出现
- score_by_round_name: dict[tuple[int, str], tuple[float, bool]] = {}
- for round_idx, eval_data in enumerate(evals):
- round_num = eval_data.get("round", round_idx + 1)
- for er in eval_data.get("eval_results") or []:
- if not (er.get("is_matched") is True or er.get("match_result") == "匹配"):
- continue
- mp = (er.get("matched_post_point") or er.get("matched_post_topic") or er.get("match_post_point") or "").strip()
- if not mp:
- continue
- key = (round_num, mp)
- if key in score_by_round_name:
- continue
- score = er.get("matched_score")
- if score is None:
- score = 1.0
- else:
- try:
- score = float(score)
- except (TypeError, ValueError):
- score = 1.0
- is_fully = er.get("is_fully_derived", True)
- score_by_round_name[key] = (score, bool(is_fully))
- result = []
- derived_names_so_far: set[str] = set()
- fully_derived_names_so_far: set[str] = set() # 已出现过 is_fully_derived=true 的选题点
- best_score_by_name: dict[str, tuple[float, bool]] = {} # name -> (matched_score, is_fully_derived),遇 is_fully=true 时更新
- for i, (derivation, eval_data) in enumerate(zip(derivations, evals)):
- round_num = derivation.get("round", i + 1)
- eval_results = eval_data.get("eval_results") or []
- matched_post_points = set()
- for er in eval_results:
- if not (er.get("is_matched") is True or er.get("match_result") == "匹配"):
- continue
- mp = er.get("matched_post_point") or er.get("matched_post_topic") or er.get("match_post_point") or ""
- if mp and str(mp).strip():
- matched_post_points.add(str(mp).strip())
- # 本轮每个匹配名的 (score, is_fully)
- this_round_scores: dict[str, tuple[float, bool]] = {}
- for name in matched_post_points:
- val = score_by_round_name.get((round_num, name))
- if val is not None:
- this_round_scores[name] = val
- # 本次新推导成功:首次匹配 或 之前 is_fully=false 且本轮 is_fully=true
- new_derived_names = set()
- for name in matched_post_points:
- score, is_fully = this_round_scores.get(name, (None, False))
- if name not in derived_names_so_far:
- new_derived_names.add(name)
- elif name not in fully_derived_names_so_far and is_fully:
- new_derived_names.add(name)
- # 更新推导集合与 best:首次出现或本轮 is_fully=true 时更新 best
- derived_names_so_far |= matched_post_points
- for name in matched_post_points:
- val = this_round_scores.get(name)
- if val is None:
- continue
- score, is_fully = val
- if name not in best_score_by_name:
- best_score_by_name[name] = (score, is_fully)
- elif is_fully:
- best_score_by_name[name] = (score, is_fully)
- if is_fully:
- fully_derived_names_so_far.add(name)
- derived_keys = {k for k in all_keys if topic_by_key[k]["name"] in derived_names_so_far}
- new_derived_keys = {k for k in all_keys if topic_by_key[k]["name"] in new_derived_names}
- not_derived_keys = all_keys - derived_keys
- sort_derived = sorted(derived_keys, key=lambda k: (topic_by_key[k]["name"], k[1], k[2]))
- sort_new = sorted(new_derived_keys, key=lambda k: (topic_by_key[k]["name"], k[1], k[2]))
- sort_not = sorted(not_derived_keys, key=lambda k: (topic_by_key[k]["name"], k[1], k[2]))
- def add_score_fields(keys: set, sort_keys: list, round_for_score: int | None) -> list[dict]:
- """round_for_score: 用该轮评估的分数;若为 None 则不添加 score 字段。"""
- out = []
- for k in sort_keys:
- if k not in keys:
- continue
- obj = dict(topic_by_key[k])
- if round_for_score is not None:
- name = obj.get("name", "")
- val = score_by_round_name.get((round_for_score, name))
- if val is not None:
- obj["matched_score"] = val[0]
- obj["is_fully_derived"] = val[1]
- else:
- obj["matched_score"] = None
- obj["is_fully_derived"] = False
- out.append(obj)
- return out
- # 推导成功的选题点:用当前已更新的 best (matched_score, is_fully_derived)
- derived_list = []
- for k in sort_derived:
- if k not in derived_keys:
- continue
- obj = dict(topic_by_key[k])
- name = obj.get("name", "")
- val = best_score_by_name.get(name)
- if val is not None:
- obj["matched_score"] = val[0]
- obj["is_fully_derived"] = val[1]
- else:
- obj["matched_score"] = None
- obj["is_fully_derived"] = False
- derived_list.append(obj)
- new_list = add_score_fields(new_derived_keys, sort_new, round_for_score=round_num)
- not_derived_list = [dict(topic_by_key[k]) for k in sort_not] # 不带 matched_score、is_fully_derived
- result.append({
- "轮次": round_num,
- "推导成功的选题点": derived_list,
- "未推导成功的选题点": not_derived_list,
- "本次新推导成功的选题点": new_list,
- })
- return result
- def _tree_node_display_name(raw: str) -> str:
- """人设节点可能是 a.b.c 路径形式,实际需要的是最后一段节点名 c。"""
- s = (raw or "").strip()
- if "." in s:
- return s.rsplit(".", 1)[-1].strip() or s
- return s
- def _to_tree_node(name: str, extra: dict | None = None) -> dict:
- d = {"name": name}
- if extra:
- d.update(extra)
- return d
- def _to_pattern_node(pattern_name: str) -> dict:
- """将 pattern 字符串转为 input_pattern_nodes 的一项(简化版)。"""
- items = [x.strip() for x in pattern_name.replace("+", " ").split() if x.strip()]
- return {
- "items": [{"name": x, "point": "关键点", "dimension": "形式", "type": "标签"} for x in items],
- "match_items": items,
- }
- def build_visualize_edges(
- derivations: list[dict],
- evals: list[dict],
- topic_points: list[dict],
- ) -> tuple[list[dict], list[dict]]:
- """
- 生成 node_list(所有评估通过的帖子选题点)和 edge_list(只保留评估通过的推导路径)。
- - node_list:同一轮内节点不重复,重复时保留 matched_score 更高的;节点带 matched_score、is_fully_derived。
- - edge_list:边带 level(与 output 节点 level 一致);同一轮内 output 节点不重复;若前面轮次该节点匹配分更高则本轮不保留该节点。
- 评估数据支持 path_id(对应推导 derivation_results[].id)、item_id(output 中元素从 1 起的序号)、matched_score、is_fully_derived。
- """
- derivations = sorted(derivations, key=lambda d: d.get("round", 0))
- evals = sorted(evals, key=lambda e: e.get("round", 0))
- topic_by_name = {t["name"]: t for t in topic_points}
- # 评估匹配:(round_num, path_id, item_id) -> (matched_post_point, matched_reason, matched_score, is_fully_derived)
- # path_id = 推导中 derivation_results[].id,item_id = output 中元素从 1 起的序号
- match_by_path_item: dict[tuple[int, int, int], tuple[str, str, float, bool]] = {}
- match_by_round_output: dict[tuple[int, str], tuple[str, str, float, bool]] = {} # 兼容无 path_id/item_id
- for round_idx, eval_data in enumerate(evals):
- round_num = eval_data.get("round", round_idx + 1)
- for er in eval_data.get("eval_results") or []:
- if not (er.get("is_matched") is True or er.get("match_result") == "匹配"):
- continue
- mp = (er.get("matched_post_point") or er.get("matched_post_topic") or er.get("match_post_point") or "").strip()
- if not mp:
- continue
- out_point = (er.get("derivation_output_point") or "").strip()
- reason = (er.get("matched_reason") or er.get("match_reason") or "").strip()
- score = er.get("matched_score")
- if score is None:
- score = 1.0
- else:
- try:
- score = float(score)
- except (TypeError, ValueError):
- score = 1.0
- is_fully = er.get("is_fully_derived", True)
- val = (mp, reason, score, bool(is_fully))
- path_id = er.get("path_id")
- item_id = er.get("item_id")
- if path_id is not None and item_id is not None:
- try:
- match_by_path_item[(round_num, int(path_id), int(item_id))] = val
- except (TypeError, ValueError):
- pass
- if out_point:
- k = (round_num, out_point)
- if k not in match_by_round_output:
- match_by_round_output[k] = val
- # 按 (round_num, mp) 收集节点候选,同轮同节点保留 matched_score 最高的一条
- node_candidates: dict[tuple[int, str], dict] = {} # (round_num, mp) -> node_dict (含 score, is_fully_derived)
- def get_match(round_num: int, path_id: int | None, item_id: int | None, out_item: str) -> tuple[str, str, float, bool] | None:
- if path_id is not None and item_id is not None:
- v = match_by_path_item.get((round_num, path_id, item_id))
- if v is not None:
- return v
- return match_by_round_output.get((round_num, out_item))
- edge_list = []
- round_output_seen: set[tuple[int, str]] = set() # (round_num, node_name) 本轮已作为某边的 output
- best_score_by_node: dict[str, float] = {} # node_name -> 已出现过的最高 matched_score
- for round_idx, derivation in enumerate(derivations):
- round_num = derivation.get("round", round_idx + 1)
- for dr in derivation.get("derivation_results") or []:
- output_list = dr.get("output") or []
- path_id = dr.get("id")
- matched: list[tuple[str, str, float, bool, str]] = [] # (mp, reason, score, is_fully, derivation_out)
- for i, out_item in enumerate(output_list):
- item_id = i + 1
- v = get_match(round_num, path_id, item_id, out_item)
- if not v:
- continue
- mp, reason, score, is_fully = v
- matched.append((mp, reason, score, is_fully, out_item))
- if not matched:
- continue
- # 同一轮内 output 节点不重复;若前面轮次该节点匹配分更高则本轮不保留
- output_names_this_edge = []
- for mp, reason, score, is_fully, out_item in matched:
- if (round_num, mp) in round_output_seen:
- continue
- if score <= best_score_by_node.get(mp, -1.0):
- continue
- output_names_this_edge.append((mp, reason, score, is_fully, out_item))
- if not output_names_this_edge:
- continue
- for mp, _r, score, _f, _o in output_names_this_edge:
- round_output_seen.add((round_num, mp))
- best_score_by_node[mp] = max(best_score_by_node.get(mp, -1.0), score)
- # 节点候选:同轮同节点保留匹配分更高的
- for mp, _reason, score, is_fully, _out_item in output_names_this_edge:
- key = (round_num, mp)
- if key not in node_candidates or node_candidates[key].get("matched_score", 0) < score:
- node = dict(topic_by_name.get(mp, {"name": mp, "point": "", "dimension": "", "root_source": "", "root_sources_desc": ""}))
- node["level"] = round_num
- node.setdefault("original_word", node.get("name", mp))
- node["derivation_type"] = dr.get("method", "")
- node["matched_score"] = score
- node["is_fully_derived"] = is_fully
- node_candidates[key] = node
- input_data = dr.get("input") or {}
- derived_nodes = input_data.get("derived_nodes") or []
- tree_nodes = input_data.get("tree_nodes") or []
- patterns = input_data.get("patterns") or []
- input_post_nodes = [{"name": x} for x in derived_nodes]
- input_tree_nodes = [_to_tree_node(_tree_node_display_name(x)) for x in tree_nodes]
- if patterns and isinstance(patterns[0], str):
- input_pattern_nodes = [_to_pattern_node(p) for p in patterns]
- elif patterns and isinstance(patterns[0], dict):
- input_pattern_nodes = patterns
- else:
- input_pattern_nodes = []
- output_nodes = []
- reasons_list = []
- derivation_points_list = []
- for mp, reason, score, is_fully, out_item in output_names_this_edge:
- output_nodes.append({"name": mp, "matched_score": score, "is_fully_derived": is_fully})
- reasons_list.append(reason)
- derivation_points_list.append(out_item)
- detail = {
- "reason": dr.get("reason", ""),
- "评估结果": "匹配成功",
- }
- if any(reasons_list):
- detail["匹配理由"] = reasons_list
- detail["待比对的推导选题点"] = derivation_points_list
- if dr.get("tools"):
- detail["tools"] = dr["tools"]
- edge_list.append({
- "name": dr.get("method", "") or f"推导-{round_num}",
- "level": round_num,
- "input_post_nodes": input_post_nodes,
- "input_tree_nodes": input_tree_nodes,
- "input_pattern_nodes": input_pattern_nodes,
- "output_nodes": output_nodes,
- "detail": detail,
- })
- node_list = list(node_candidates.values())
- return node_list, edge_list
- def _find_project_root() -> Path:
- """从脚本所在目录向上查找包含 .git 的项目根目录。"""
- p = Path(__file__).resolve().parent
- while p != p.parent:
- if (p / ".git").is_dir():
- return p
- p = p.parent
- return Path(__file__).resolve().parent
- def generate_visualize_data(account_name: str, post_id: str, log_id: str, base_dir: Path | None = None) -> None:
- """
- 主流程:读取解构内容与推导日志,生成整体推导结果与整体推导路径可视化两个 JSON。
- base_dir 默认为脚本所在目录;若其下 output/.../推导日志 不存在,则尝试项目根目录下的 output/...(兼容从项目根运行)。
- """
- if base_dir is None:
- base_dir = Path(__file__).resolve().parent
- input_dir = base_dir / "input" / account_name / "原始数据" / "解构内容"
- log_dir = base_dir / "output" / account_name / "推导日志" / post_id / log_id
- result_dir = base_dir / "output" / account_name / "整体推导结果"
- visualize_dir = base_dir / "output" / account_name / "整体推导路径可视化"
- # 兼容:若推导日志不在 base_dir 下,尝试项目根目录下的 output/
- if not log_dir.is_dir():
- project_root = _find_project_root()
- if project_root != base_dir:
- alt_log = project_root / "output" / account_name / "推导日志" / post_id / log_id
- if alt_log.is_dir():
- log_dir = alt_log
- result_dir = project_root / "output" / account_name / "整体推导结果"
- visualize_dir = project_root / "output" / account_name / "整体推导路径可视化"
- deconstruct_path = input_dir / f"{post_id}.json"
- topic_points = parse_topic_points_from_deconstruct(deconstruct_path)
- derivations, evals = load_derivation_logs(log_dir)
- if not derivations or not evals:
- raise ValueError(f"推导或评估数据为空: {log_dir}")
- # 2.1 整体推导结果
- derivation_result = build_derivation_result(topic_points, derivations, evals)
- result_dir.mkdir(parents=True, exist_ok=True)
- result_path = result_dir / f"{post_id}.json"
- with open(result_path, "w", encoding="utf-8") as f:
- json.dump(derivation_result, f, ensure_ascii=False, indent=4)
- print(f"已写入整体推导结果: {result_path}")
- # 2.2 整体推导路径可视化
- node_list, edge_list = build_visualize_edges(derivations, evals, topic_points)
- visualize_path = visualize_dir / f"{post_id}.json"
- visualize_dir.mkdir(parents=True, exist_ok=True)
- with open(visualize_path, "w", encoding="utf-8") as f:
- json.dump({"node_list": node_list, "edge_list": edge_list}, f, ensure_ascii=False, indent=4)
- print(f"已写入整体推导路径可视化: {visualize_path}")
- def main(account_name, post_id, log_id):
- # parser = argparse.ArgumentParser(description="生成推导可视化数据")
- # parser.add_argument("account_name", help="账号名,如 家有大志")
- # parser.add_argument("post_id", help="帖子 ID")
- # parser.add_argument("log_id", help="推导日志 ID,如 20260303204232")
- # parser.add_argument("--base-dir", type=Path, default=None, help="项目根目录,默认为本脚本所在目录")
- # args = parser.parse_args()
- generate_visualize_data(account_name=account_name, post_id=post_id, log_id=log_id)
- if __name__ == "__main__":
- account_name="家有大志"
- post_id = "68fb6a5c000000000302e5de"
- log_id="20260310220945"
- main(account_name, post_id, log_id)
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