中文核心期刊J* E* C* N* U* N* S* ›› 2026, Vol. 2026 ›› Issue (4): 123-133.doi: 10.3969/j.issn.1000-5641.2026.04.013
Received:2024-12-11
Online:2026-07-25
Published:2026-07-18
Contact:
Zhiyun CHEN
E-mail:chenzhy@cc.ecnu.edu.cn
CLC Number:
Zihao GONG, Zhiyun CHEN. FusionSeg: Topic segmentation model based on semantic feature fusion[J]. J* E* C* N* U* N* S*, 2026, 2026(4): 123-133.
Table 1
Dataset employed in the experimental investigation"
| 数据集名称 | 文档总数/篇 | 平均句子数/(句/篇) | 句平均字符数/(个/句) | 单文档平均主题数/(个/篇) | 单主题平均句子数/(句/个) |
| Wiki-727k 训练集[ | 47.9 | 20.7 | 5.3 | 9.1 | |
| Wiki-727k 开发集[ | 48.1 | 20.8 | 5.3 | 9.1 | |
| Wiki-727k 测试集[ | 48.7 | 20.7 | 5.3 | 9.1 | |
| En-city 数据集[ | 56.5 | / | 8.3 | 6.8 | |
| Wiki-zh 训练集[ | 11.9 | 38.8 | 4.7 | 2.5 | |
| Wiki-zh 开发集[ | 11.8 | 38.7 | 4.7 | 2.5 | |
| Wiki-zh 测试集[ | 11.9 | 38.8 | 4.7 | 2.5 |
Table 2
Experimental results on Wiki-zh and Wiki-727k"
| 模型名称 | Wiki-zh上的实验结果 | Wiki-727k上的实验结果 | |||||
| SeqModel:BERT-Base[ | 0.7840 | 0.6950 | 0.7370 | 0.7060 | 0.6590 | 0.6820 | |
| Hier.BERT (24-Layers)[ | / | / | / | 0.6980 | 0.6350 | 0.6650 | |
| SeqModel:StructBERT-Base[ | 0.7920 | 0.7270 | 0.7580 | / | / | / | |
| Cross-segment BERT-Base 128-128[ | 0.6120 | 0.8020 | 0.6940 | / | / | 0.6400 | |
| Cross-segment BERT-Large 128-128[ | / | / | / | 0.6910 | 0.6320 | 0.6600 | |
| Cross-segment BERT-Large 256-256[ | / | / | / | 0.6150 | 0.7390 | 0.6710 | |
| SeqModel:RoBERTa-Base[ | 0.7460 | 0.7370 | 0.7420 | / | / | / | |
| SeqModel:ELECTRA-Base[ | 0.7350 | 0.7660 | 0.7500 | / | / | / | |
| FusionSeg | 0.8360 | 0.8340 | 0.8350 | 0.8220 | 0.6980 | 0.7550 | |
Table 3
Experimental results on En-city"
| 模型名称 | En-city上的实验结果 | ||
| SEC>T + bloom[ | 14.4 | / | 0.7160 |
| S-LSTM [ | 9.10 | / | 0.7610 |
| BERT-Base + BiLSTM[ | 9.60 | 12.80 | 0.8150 |
| 9.10 | / | / | |
| Tipster[ | 8.30 | / | 0.7980 |
| PEN-NS[ | 8.00 | / | 0.8000 |
| Naive LongT5-Base-DS[ | 8.20 | / | 0.6600 |
| Naive LongT5-Base-SS[ | 9.20 | / | 0.7310 |
| BERT-Base [ | 8.94 | 11.34 | 0.7899 |
| BERT-Base + TSSP + CSSL[ | 8.22 | 10.19 | 0.8020 |
| FusionSeg | 7.31 | 9.94 | 0.8647 |
Table 4
Ablation Experiment Results"
| 模块/方法名称 | En-city上的实验结果 | Wiki-727k上的实验结果 | |||||
| BERT-Base | 8.94 | 11.34 | 0.7899 | / | / | / | |
| BERT-Base + BiLSTM | 9.60 | 12.80 | 0.8150 | 0.6730 | 0.5390 | 0.5990 | |
| BERT-Base + BiLSTM + Fusion Encoder (without attention) | 8.63 | 11.71 | 0.8356 | / | / | / | |
| BERT-Base + BiLSTM + Fusion Encoder | 8.62 | 11.61 | 0.8371 | 0.8100 | 0.6850 | 0.7420 | |
| BERT-Base + BiLSTM + Fusion Encoder (without attention) + FCLL | 7.40 | 10.00 | 0.8638 | / | / | / | |
| BERT-Base + BiLSTM + Fusion Encoder + FCLL | 7.31 | 9.94 | 0.8647 | 0.8220 | 0.6980 | 0.7550 | |
Table 5
Impact of loss weights on fusion contrastive learning"
| En-city上的实验结果 | Wiki-727k上的实验结果 | ||||||
| 0 | 8.62 | 11.61 | 0.8371 | 0.8102 | 0.6851 | 0.7424 | |
| 0.5 | 7.40 | 10.01 | 0.8634 | 0.8171 | 0.6813 | 0.7430 | |
| 0.75 | 7.56 | 10.37 | 0.8669 | 0.8219 | 0.6982 | 0.7550 | |
| 1 | 7.49 | 10.37 | 0.8574 | 0.8283 | 0.6845 | 0.7496 | |
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