Generating word and document matrix representations for document classification
发表时间:2020-07-19
点击次数:
论文类型:
期刊论文
第一作者:
Guo, Shun
通讯作者:
Guo, S (corresponding author), Dalian Univ Technol, Dept Comp Sci & Technol, Dalian, Peoples R China.
合写作者:
Yao, Nianmin
发表时间:
2020-07-01
发表刊物:
NEURAL COMPUTING & APPLICATIONS
收录刊物:
SCIE
文献类型:
J
卷号:
32
期号:
14
页面范围:
10087-10108
ISSN号:
0941-0643
关键字:
Document-level classification; Word matrix; Document matrix; Subwindows
摘要:
We present an effective word and document matrix representation architecture based on a linear operation, referred to as doc2matrix, to learn representations for document-level classification. It uses a matrix to present each word or document, which is different from the traditional form of vector representation. Doc2matrix defines proper subwindows as the scale of text. A word matrix and a document matrix are generated by stacking the information of these subwindows. Our document matrix not only contains more fine-grained semantic and syntactic information than the original representation but also introduces abundant two-dimensional features. Experiments conducted on four document-level classification tasks demonstrate that the proposed architecture can generate higher-quality word and document representations and outperform previous models based on linear operations. We can see that compared to different classifiers, a convolutional-based classifier is more suitable for our document matrix. Furthermore, we also demonstrate that the convolution operation can better capture the two-dimensional features of the proposed document matrix by the analysis from both theoretical and experimental perspectives.
是否译文:
否