A System for Classifying Proposals and Estimating Start Pages Stated in Notice of Annual Meeting of Shareholders
-
- Takano Kaito
- Graduate School of Science and Technology, Seikei University
-
- Sakai Hiroyuki
- Department of Computer and Information Science, Faculty of Science and Technology, Seikei University
-
- Sakaji Hiroki
- School of Engineering, The University of Tokyo
-
- Izumi Kiyoshi
- School of Engineering, The University of Tokyo
-
- Okada Nana
- NIKKEI RESEARCH INC.
-
- Mizuuchi Toshikazu
- NIKKEI RESEARCH INC.
Bibliographic Information
- Other Title
-
- 株主招集通知における議案タイトルとその分類及び開始ページの推定システム
- カブヌシ ショウシュウ ツウチ ニ オケル ギアン タイトル ト ソノ ブンルイ オヨビ カイシ ページ ノ スイテイ システム
Search this article
Abstract
<p>In this paper, we describe research on applied systems for realizing efficiency of work to store information of notice of annual meeting of shareholders in the database by using text mining technology. We aim to estimate start pages of proposals stated in notice of the meeting of shareholders and classify which proposal the page is. And we developed a system that automatically performs these tasks using text information of the notice of convocation of shareholders, and actually operates it. As a result of comparative experiment between our implemented system and conventional manual work, the working time was shortened to about 1/10. We propose three methods for classifying proposals. The first method classifies proposals by specialized terms extracted from training data. The second method classifies proposals by using deep learning. The final method classifies proposals by extracted proposal title. We evaluated our methods, and the effectiveness of each method was verified. </p>
Journal
-
- Journal of Natural Language Processing
-
Journal of Natural Language Processing 25 (1), 3-31, 2018-02-15
The Association for Natural Language Processing
- Tweet
Details 詳細情報について
-
- CRID
- 1390001204476739200
-
- NII Article ID
- 130006734201
- 40021480259
-
- NII Book ID
- AN10472659
-
- ISSN
- 21858314
- 13407619
-
- NDL BIB ID
- 028852207
-
- Text Lang
- ja
-
- Data Source
-
- JaLC
- NDL
- Crossref
- CiNii Articles
- KAKEN
-
- Abstract License Flag
- Disallowed