Dòng Nội dung
1
Ứng dụng và hiệu quả sử dụng của từ tượng thanh, từ tượng hình trong tiếng Nhật / Nguyễn Thị Minh Huyền; Nguyễn Thị Đăng Thu hướng dẫn.
Hà Nội : Trường đại học Hà Nội, 2017.
48 tr. : Tranh in màu, biểu đồ ; 30 cm.


Đầu mục:2 (Lượt lưu thông:0) Tài liệu số:1 (Lượt truy cập:2)
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VLSP Shared Task : Named Entity Recognition / Nguyễn Thị Minh Huyền... // Tạp chí Tin học và Điều khiển học Vol.34, No 4
2018.
tr. 283-294

Named entities (NE) are phrases that contain the names of persons, organizations, locations, times and quantities, monetary values, percentages, etc. Named Entity Recognition (NER) is the task of recognizing named entities in documents. NER is an important subtask of Information Extraction, which has attracted researchers all over the world since 1990s. For Vietnamese language, although there exists some research projects and publications on NER task before 2016, no systematic comparison of the performance of NER systems has been done. In 2016, the organizing committee of the VLSP workshop decided to launch the first NER shared task, in order to get an objective evaluation of Vietnamese NER systems and to promote the development of high quality systems. As a result, the first dataset with morpho-syntactic and NE annotations has been released for benchmarking NER systems. At VLSP 2018, the NER shared task has been organized for the second time, providing a bigger dataset containing texts from various domains, but without morpho-syntactic annotation. These resources are available for research purpose via the VLSP website vlsp.org.vn/resources. In this paper, we describe the datasets as well as the evaluation results obtained from these two campaigns.
Đầu mục:0 (Lượt lưu thông:0) Tài liệu số:0 (Lượt truy cập:0)
3
Vlsp shared task : sentiment analysis / Nguyễn Thị Minh Huyền... // Tạp chí Tin học và Điều khiển học Vol.34, No 4
2018.
tr. 295-310

Sentiment analysis is a natural language processing (NLP) task of identifying or extracting the sentiment content of a text unit. This task has become an active research topic since the early 2000s. During the two last editions of the VLSP workshop series, the shared task on Sentiment Analysis (SA) for Vietnamese has been organized in order to provide an objective evaluation measurement about the performance (quality) of sentiment analysis tools, and encourage the development of Vietnamese sentiment analysis systems, as well as to provide benchmark datasets for this task. The first campaign in 2016 only focused on the sentiment polarity classication, with a dataset containing reviews of electronic products. The second campaign in 2018 addressed the problem of Aspect Based Sentiment Analysis (ABSA) for Vietnamese, by providing two datasets containing reviews in restaurant and hotel domains. These data are accessible for research purpose via the VLSP website vlsp.org.vn/resources. This paper describes the built datasets as well as the evaluation results of the systems participating to these campaigns.
Đầu mục:0 (Lượt lưu thông:0) Tài liệu số:0 (Lượt truy cập:0)