Hapnes Toba
University of Indonesia
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Publication
Featured researches published by Hapnes Toba.
Information Sciences | 2014
Hapnes Toba; Zhao-Yan Ming; Mirna Adriani; Tat-Seng Chua
In community-based question answering (CQA) services where answers are generated by human, users may expect better answers than an automatic question answering system. However, in some cases, the user generated answers provided by CQA archives are not always of high quality. Most existing works on answer quality prediction use the same model for all answers, despite the fact that each answer is intrinsically different. However, modeling each individual QA pair differently is not feasible in practice. To balance between efficiency and accuracy, we propose a hybrid hierarchy-of-classifiers framework to model the QA pairs. First, we analyze the question type to guide the selection of the right answer quality model. Second, we use the information from question analysis to predict the expected answer features and train the type-based quality classifiers to hierarchically aggregate an overall answer quality score. We also propose a number of novel features that are effective in distinguishing the quality of answers. We tested the framework on a dataset of about 50 thousand QA pairs from Yahoo! Answer. The results show that our proposed framework is effective in identifying high quality answers. Moreover, further analysis reveals the ability of our framework to classify low quality answers more accurately than a single classifier approach.
Proceedings of the 1st International Conference on Medical and Health Informatics 2017 | 2017
Aulia Zahrina Qashri; Oscar Karnalim; Hapnes Toba
A large number of doctors and wide range of medical specialties can cause confusion in choosing the right medical specialist. This research aims to build a medical specialists retrieval system that corresponds with the users disease. To make the system whole, it requires the ability to differentiate a query from common words and relate it to a disease, then associate the disease to related medical specialties. The Unified Medical Language System (UMLS) is used in query handling and finding relations between a disease and medical specialties. Additionally, the search results are sorted by the nearest medical practices based on users location. This system has been evaluated by two internists which revealed an average score of 4.625 out of 5, which means relevant, of all points evaluated. Thus, provided a positive feedback to overall system performance.
cross-language evaluation forum | 2010
Hapnes Toba; Syandra Sari; Mirna Adriani; Ruli Manurung
international conference on advanced computer science and information systems | 2011
Hapnes Toba; Mirna Adriani; Ruli Manurung
international conference on data and software engineering | 2017
Mewati Ayub; Hapnes Toba; Maresha Caroline Wijanto; Steven Yong
Archive | 2017
Hapnes Toba; Evelyn A. Wijaya; Maresha Caroline Wijanto; Oscar Karnalim
SEMNASTEKNOMEDIA ONLINE | 2016
Hapnes Toba; William Stefanus
Archive | 2016
Hapnes Toba; Evelyn A. Wijaya; Maresha Caroline Wijanto; Oscar Karnalim
Jurnal Teknik Informatika dan Sistem Informasi | 2016
Chandra Ari Gunawan; Hapnes Toba
Archive | 2014
Sandi Guna Wirawan; Oscar Karnalim; Hapnes Toba