SPAMID-PAIR SISTEM REPOSITORI: INDONESIAN SPAM PAIR DATASET

Antonius Rachmat Chrismanto and Yohanes Suyanto and Anny Kartika Sari (2022) SPAMID-PAIR SISTEM REPOSITORI: INDONESIAN SPAM PAIR DATASET. Jurnal HKI Program Komputer, 13 (1).

[img] Text (Artikel Jurnal)
SPAMID-PAIR.pdf - Published Version

Download (1MB)

Abstract

The detection of spam content is an important task especially in social media. It has become a topic to be continuely studied in Natural Language Processing (NLP) area in the last few years. However, limited data sets are available for this research topic because most researchers collect the data by themselves and make it private. Moreover, most available data sets only provide the post content without considering the comment content. This data becomes a limitation because the post-comment pair is needed when determining the context of a comment from a particular post. The context may contribute to the decision of whether a comment is a spam or not. The scarcity of non-English data sets, including Indonesian, is also another issue. To solve these problems, the authors introduce SPAMID-PAIR, a novel post-comment pair data set collected from Instagram (IG) in Indonesian. It is collected from selected 13 Indonesian actress/actor accounts, each of which has more than 15 million followers. It contains 72874 pairs of data. This data set has been annotated with spam/non-spam labels in Unicode (UTF-8) text format. The data also includes a lot of emojis/emoticons from IG. To test the baseline performance, the data is tested with some machine learning methods using several scenarios and achieves good performance. This dataset aims to be used for the replicable experiment in spam content detection on social media and other tasks in the NLP area.

Item Type: Article
Uncontrolled Keywords: Dataset; natural language processing; spam detection; spamid-pair; post-comment pairs
Subjects: Q Ilmu Pengetahuan > Matematika > Komputer Elektronik. Ilmu Komputer
Divisions: Fakultas Teknologi Informasi
Depositing User: Beatrix Stefany
Date Deposited: 24 Sep 2024 02:10
Last Modified: 24 Sep 2024 02:10
URI: http://katalog.ukdw.ac.id/id/eprint/9367

Actions (login required)

View Item View Item