adaptive_rag / hallucination_detector.py
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"""
专业幻觉检测模块
支持多种检测方法:NLI模型、专门检测模型、混合检测
"""
import re
from typing import List, Dict, Tuple
import torch
from transformers import (
AutoModelForSequenceClassification,
AutoTokenizer,
pipeline
)
from sklearn.metrics.pairwise import cosine_similarity
import numpy as np
class VectaraHallucinationDetector:
"""
Vectara 专门的幻觉检测模型
使用 HHEM (Hughes Hallucination Evaluation Model)
"""
def __init__(self):
"""初始化 Vectara 幻觉检测模型"""
print("🔧 初始化 Vectara 幻觉检测模型...")
try:
self.model_name = "vectara/hallucination_evaluation_model"
self.tokenizer = AutoTokenizer.from_pretrained(self.model_name)
self.model = AutoModelForSequenceClassification.from_pretrained(self.model_name)
self.model.eval() # 设置为评估模式
# 移动到GPU(如果可用)
self.device = "cuda" if torch.cuda.is_available() else "cpu"
self.model.to(self.device)
print(f"✅ Vectara 模型加载成功 (device: {self.device})")
except Exception as e:
print(f"⚠️ Vectara 模型加载失败: {e}")
print("💡 尝试使用 NLI 模型作为备选...")
self.model = None
def detect(self, generation: str, documents: str) -> Dict:
"""
检测幻觉
Args:
generation: LLM 生成的内容
documents: 参考文档
Returns:
{
"has_hallucination": bool,
"hallucination_score": float (0-1),
"factuality_score": float (0-1)
}
"""
if self.model is None:
return {"has_hallucination": False, "hallucination_score": 0.0, "factuality_score": 1.0}
try:
# 准备输入
inputs = self.tokenizer(
documents,
generation,
return_tensors="pt",
truncation=True,
max_length=512,
padding=True
).to(self.device)
# 推理
with torch.no_grad():
outputs = self.model(**inputs)
logits = outputs.logits
probs = torch.softmax(logits, dim=-1)
# Vectara 模型输出:[0] = factual, [1] = hallucinated
factuality_score = probs[0][0].item()
hallucination_score = probs[0][1].item()
# 判断是否有幻觉(阈值 0.5)
has_hallucination = hallucination_score > 0.5
return {
"has_hallucination": has_hallucination,
"hallucination_score": hallucination_score,
"factuality_score": factuality_score
}
except Exception as e:
print(f"❌ Vectara 检测失败: {e}")
return {"has_hallucination": False, "hallucination_score": 0.0, "factuality_score": 1.0}
class NLIHallucinationDetector:
"""
基于 NLI (Natural Language Inference) 的幻觉检测
使用 DeBERTa 模型
"""
def __init__(self):
"""初始化 NLI 模型"""
print("🔧 初始化 NLI 幻觉检测模型...")
try:
self.nli_model = pipeline(
"text-classification",
model="microsoft/deberta-large-mnli",
device=0 if torch.cuda.is_available() else -1
)
print("✅ NLI 模型加载成功")
except Exception as e:
print(f"❌ NLI 模型加载失败: {e}")
self.nli_model = None
def split_sentences(self, text: str) -> List[str]:
"""分割句子"""
# 简单的句子分割(可以用更复杂的 NLP 工具)
sentences = re.split(r'[。!?\.\!\?]\s*', text)
return [s.strip() for s in sentences if s.strip()]
def detect(self, generation: str, documents: str) -> Dict:
"""
检测幻觉
Args:
generation: LLM 生成的内容
documents: 参考文档
Returns:
{
"has_hallucination": bool,
"contradiction_count": int,
"neutral_count": int,
"entailment_count": int,
"problematic_sentences": List[str]
}
"""
if self.nli_model is None:
return {
"has_hallucination": False,
"contradiction_count": 0,
"neutral_count": 0,
"entailment_count": 0,
"problematic_sentences": []
}
# 分割成句子
sentences = self.split_sentences(generation)
contradiction_count = 0
neutral_count = 0
entailment_count = 0
problematic_sentences = []
for sentence in sentences:
if len(sentence) < 10: # 跳过太短的句子
continue
try:
# NLI 推理:premise (文档) → hypothesis (生成的句子)
result = self.nli_model({
"text": documents[:500], # 限制文档长度
"text_pair": sentence
})
label = result[0]['label'].lower()
if 'contradiction' in label:
contradiction_count += 1
problematic_sentences.append(sentence)
elif 'neutral' in label:
neutral_count += 1
# neutral 也可能是幻觉(文档中没有支持)
problematic_sentences.append(sentence)
elif 'entailment' in label:
entailment_count += 1
except Exception as e:
print(f"⚠️ NLI 检测句子失败: {e}")
continue
# 判断是否有幻觉
has_hallucination = contradiction_count > 0 or neutral_count > len(sentences) * 0.5
return {
"has_hallucination": has_hallucination,
"contradiction_count": contradiction_count,
"neutral_count": neutral_count,
"entailment_count": entailment_count,
"problematic_sentences": problematic_sentences
}
class HybridHallucinationDetector:
"""
混合幻觉检测器
结合 Vectara 模型和 NLI 模型,提供最佳检测效果
"""
def __init__(self, use_vectara: bool = True, use_nli: bool = True):
"""
初始化混合检测器
Args:
use_vectara: 是否使用 Vectara 模型
use_nli: 是否使用 NLI 模型
"""
self.detectors = {}
if use_vectara:
try:
self.detectors['vectara'] = VectaraHallucinationDetector()
except Exception as e:
print(f"⚠️ Vectara 检测器初始化失败: {e}")
if use_nli:
try:
self.detectors['nli'] = NLIHallucinationDetector()
except Exception as e:
print(f"⚠️ NLI 检测器初始化失败: {e}")
if not self.detectors:
raise RuntimeError("❌ 所有检测器初始化失败!")
print(f"✅ 混合检测器就绪,已加载: {list(self.detectors.keys())}")
def detect(self, generation: str, documents: str) -> Dict:
"""
综合检测幻觉
Returns:
{
"has_hallucination": bool,
"confidence": float,
"vectara_result": Dict,
"nli_result": Dict,
"method_used": str
}
"""
results = {
"has_hallucination": False,
"confidence": 0.0,
"method_used": ""
}
# 1. 优先使用 Vectara(最准确)
if 'vectara' in self.detectors:
vectara_result = self.detectors['vectara'].detect(generation, documents)
results['vectara_result'] = vectara_result
if vectara_result['hallucination_score'] > 0.3: # 降低阈值以提高灵敏度
results['has_hallucination'] = True
results['confidence'] = vectara_result['hallucination_score']
results['method_used'] = 'vectara'
return results
# 2. 如果 Vectara 不确定或不可用,使用 NLI 二次确认
if 'nli' in self.detectors:
nli_result = self.detectors['nli'].detect(generation, documents)
results['nli_result'] = nli_result
if nli_result['has_hallucination']:
results['has_hallucination'] = True
# 计算置信度
total_sentences = (nli_result['contradiction_count'] +
nli_result['neutral_count'] +
nli_result['entailment_count'])
if total_sentences > 0:
results['confidence'] = (nli_result['contradiction_count'] +
nli_result['neutral_count'] * 0.5) / total_sentences
results['method_used'] = 'nli'
# 如果两个模型都有结果,投票决定
if 'vectara_result' in results and 'nli_result' in results:
vectara_vote = results['vectara_result']['has_hallucination']
nli_vote = results['nli_result']['has_hallucination']
if vectara_vote and nli_vote:
results['has_hallucination'] = True
results['confidence'] = min(
results.get('vectara_result', {}).get('hallucination_score', 0.5),
results.get('confidence', 0.5)
)
results['method_used'] = 'vectara+nli'
return results
def grade(self, generation: str, documents) -> str:
"""
兼容原有接口的检测方法
Args:
generation: LLM 生成的内容
documents: 参考文档(可以是字符串或列表)
Returns:
"yes" 表示无幻觉,"no" 表示有幻觉
"""
# 处理文档格式
if isinstance(documents, list):
doc_text = "\n\n".join([
doc.page_content if hasattr(doc, 'page_content') else str(doc)
for doc in documents
])
else:
doc_text = str(documents)
# 检测幻觉
result = self.detect(generation, doc_text)
# 打印详细信息
if result['has_hallucination']:
print(f"⚠️ 检测到幻觉 (置信度: {result['confidence']:.2f}, 方法: {result['method_used']})")
if 'nli_result' in result:
print(f" 矛盾句子: {result['nli_result']['contradiction_count']}")
if result['nli_result']['problematic_sentences']:
print(f" 问题句子: {result['nli_result']['problematic_sentences'][:2]}")
else:
print(f"✅ 未检测到幻觉 (方法: {result['method_used']})")
# 返回兼容格式
return "no" if result['has_hallucination'] else "yes"
def initialize_hallucination_detector(method: str = "hybrid") -> object:
"""
初始化幻觉检测器
Args:
method: 'vectara', 'nli', 或 'hybrid' (推荐)
Returns:
幻觉检测器实例
"""
if method == "vectara":
return VectaraHallucinationDetector()
elif method == "nli":
return NLIHallucinationDetector()
elif method == "hybrid":
return HybridHallucinationDetector(use_vectara=True, use_nli=True)
else:
raise ValueError(f"未知的检测方法: {method}")