xgboost_train.py
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# -*- coding: utf-8 -*-
"""
XGBoost情感分析模型训练脚本
"""
import argparse
import pandas as pd
import numpy as np
from typing import List, Tuple
from sklearn.feature_extraction.text import CountVectorizer
from sklearn.metrics import accuracy_score, f1_score, roc_auc_score
import xgboost as xgb
from base_model import BaseModel
from utils import stopwords
class XGBoostModel(BaseModel):
"""XGBoost情感分析模型"""
def __init__(self):
super().__init__("XGBoost")
def train(self, train_data: List[Tuple[str, int]], **kwargs) -> None:
"""训练XGBoost模型
Args:
train_data: 训练数据,格式为[(text, label), ...]
**kwargs: 其他参数,支持XGBoost的各种参数
"""
print(f"开始训练 {self.model_name} 模型...")
# 准备数据
df_train = pd.DataFrame(train_data, columns=["words", "label"])
# 特征编码(词袋模型,限制特征数量)
max_features = kwargs.get('max_features', 2000)
print(f"构建词袋模型 (max_features={max_features})...")
self.vectorizer = CountVectorizer(
token_pattern=r'\[?\w+\]?',
stop_words=stopwords,
max_features=max_features
)
X_train = self.vectorizer.fit_transform(df_train["words"])
y_train = df_train["label"]
print(f"特征维度: {X_train.shape[1]}")
# XGBoost参数设置
params = {
'booster': kwargs.get('booster', 'gbtree'),
'max_depth': kwargs.get('max_depth', 6),
'scale_pos_weight': kwargs.get('scale_pos_weight', 0.5),
'colsample_bytree': kwargs.get('colsample_bytree', 0.8),
'objective': 'binary:logistic',
'eval_metric': 'error',
'eta': kwargs.get('eta', 0.3),
'nthread': kwargs.get('nthread', 10),
}
num_boost_round = kwargs.get('num_boost_round', 200)
print(f"训练XGBoost分类器...")
print(f"参数: {params}")
print(f"迭代轮数: {num_boost_round}")
# 创建DMatrix
dmatrix = xgb.DMatrix(X_train, label=y_train)
# 训练模型
self.model = xgb.train(params, dmatrix, num_boost_round=num_boost_round)
self.is_trained = True
print(f"{self.model_name} 模型训练完成!")
def predict(self, texts: List[str]) -> List[int]:
"""预测文本情感
Args:
texts: 待预测文本列表
Returns:
预测结果列表
"""
if not self.is_trained:
raise ValueError(f"模型 {self.model_name} 尚未训练,请先调用train方法")
# 特征转换
X = self.vectorizer.transform(texts)
# 创建DMatrix
dmatrix = xgb.DMatrix(X)
# 预测概率
y_prob = self.model.predict(dmatrix)
# 转换为类别标签
y_pred = (y_prob > 0.5).astype(int)
return y_pred.tolist()
def predict_single(self, text: str) -> Tuple[int, float]:
"""预测单条文本的情感
Args:
text: 待预测文本
Returns:
(predicted_label, confidence)
"""
if not self.is_trained:
raise ValueError(f"模型 {self.model_name} 尚未训练,请先调用train方法")
# 特征转换
X = self.vectorizer.transform([text])
# 创建DMatrix
dmatrix = xgb.DMatrix(X)
# 预测概率
prob = self.model.predict(dmatrix)[0]
# 转换为类别标签和置信度
prediction = int(prob > 0.5)
confidence = prob if prediction == 1 else 1 - prob
return prediction, float(confidence)
def evaluate(self, test_data: List[Tuple[str, int]]) -> dict:
"""评估模型性能,包含AUC指标"""
if not self.is_trained:
raise ValueError(f"模型 {self.model_name} 尚未训练,请先调用train方法")
texts = [item[0] for item in test_data]
labels = [item[1] for item in test_data]
# 预测类别
predictions = self.predict(texts)
# 预测概率(用于计算AUC)
X = self.vectorizer.transform(texts)
dmatrix = xgb.DMatrix(X)
probabilities = self.model.predict(dmatrix)
accuracy = accuracy_score(labels, predictions)
f1 = f1_score(labels, predictions, average='weighted')
auc = roc_auc_score(labels, probabilities)
print(f"\n{self.model_name} 模型评估结果:")
print(f"准确率: {accuracy:.4f}")
print(f"F1分数: {f1:.4f}")
print(f"AUC: {auc:.4f}")
return {
'accuracy': accuracy,
'f1_score': f1,
'auc': auc
}
def main():
"""主函数"""
parser = argparse.ArgumentParser(description='XGBoost情感分析模型训练')
parser.add_argument('--train_path', type=str, default='./data/weibo2018/train.txt',
help='训练数据路径')
parser.add_argument('--test_path', type=str, default='./data/weibo2018/test.txt',
help='测试数据路径')
parser.add_argument('--model_path', type=str, default='./model/xgboost_model.pkl',
help='模型保存路径')
parser.add_argument('--max_features', type=int, default=2000,
help='最大特征数量')
parser.add_argument('--max_depth', type=int, default=6,
help='XGBoost最大深度')
parser.add_argument('--eta', type=float, default=0.3,
help='XGBoost学习率')
parser.add_argument('--num_boost_round', type=int, default=200,
help='XGBoost迭代轮数')
parser.add_argument('--eval_only', action='store_true',
help='仅评估已有模型,不进行训练')
args = parser.parse_args()
# 创建模型
model = XGBoostModel()
if args.eval_only:
# 仅评估模式
print("评估模式:加载已有模型进行评估")
model.load_model(args.model_path)
# 加载测试数据
_, test_data = BaseModel.load_data(args.train_path, args.test_path)
# 评估模型
model.evaluate(test_data)
else:
# 训练模式
# 加载数据
train_data, test_data = BaseModel.load_data(args.train_path, args.test_path)
# 训练模型
model.train(
train_data,
max_features=args.max_features,
max_depth=args.max_depth,
eta=args.eta,
num_boost_round=args.num_boost_round
)
# 评估模型
model.evaluate(test_data)
# 保存模型
model.save_model(args.model_path)
# 示例预测
print("\n示例预测:")
test_texts = [
"今天天气真好,心情很棒",
"这部电影太无聊了,浪费时间",
"哈哈哈,太有趣了"
]
for text in test_texts:
pred, conf = model.predict_single(text)
sentiment = "正面" if pred == 1 else "负面"
print(f"文本: {text}")
print(f"预测: {sentiment} (置信度: {conf:.4f})")
print()
if __name__ == "__main__":
main()