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  ---
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+ annotations_creators:
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+ - mit
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+ - monolingual
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+ - question-answering
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+ - text-classification
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+ - token-classification
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+ task_ids:
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+ - closed-domain-qa
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+ - named-entity-recognition
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+ - part-of-speech
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+ - semantic-similarity-classification
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+ - sentiment-classification
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+ paperswithcode_id: indonlu-benchmark
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+ pretty_name: IndoNLU
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  ---
600
+
601
+
602
+
603
+ # Dataset Card for IndoNLU
604
+
605
+ ## Table of Contents
606
+ - [Dataset Description](#dataset-description)
607
+ - [Dataset Summary](#dataset-summary)
608
+ - [Supported Tasks and Leaderboards](#supported-tasks-and-leaderboards)
609
+ - [Languages](#languages)
610
+ - [Dataset Structure](#dataset-structure)
611
+ - [Data Instances](#data-instances)
612
+ - [Data Fields](#data-fields)
613
+ - [Data Splits](#data-splits)
614
+ - [Dataset Creation](#dataset-creation)
615
+ - [Curation Rationale](#curation-rationale)
616
+ - [Source Data](#source-data)
617
+ - [Annotations](#annotations)
618
+ - [Personal and Sensitive Information](#personal-and-sensitive-information)
619
+ - [Considerations for Using the Data](#considerations-for-using-the-data)
620
+ - [Social Impact of Dataset](#social-impact-of-dataset)
621
+ - [Discussion of Biases](#discussion-of-biases)
622
+ - [Other Known Limitations](#other-known-limitations)
623
+ - [Additional Information](#additional-information)
624
+ - [Dataset Curators](#dataset-curators)
625
+ - [Licensing Information](#licensing-information)
626
+ - [Citation Information](#citation-information)
627
+ - [Contributions](#contributions)
628
+
629
+ ## Dataset Description
630
+
631
+ - **Homepage:** [IndoNLU Website](https://www.indobenchmark.com/)
632
+ - **Repository:** [IndoNLU GitHub](https://github.com/indobenchmark/indonlu)
633
+ - **Paper:** [IndoNLU: Benchmark and Resources for Evaluating Indonesian Natural Language Understanding](https://www.aclweb.org/anthology/2020aacl-main.85.pdf)
634
+ - **Leaderboard:** [Needs More Information]
635
+ - **Point of Contact:** [Needs More Information]
636
+
637
+ ### Dataset Summary
638
+
639
+ The IndoNLU benchmark is a collection of resources for training, evaluating, and analyzing natural language understanding systems for Bahasa Indonesia (Indonesian language).
640
+ There are 12 datasets in IndoNLU benchmark for Indonesian natural language understanding.
641
+ 1. `EmoT`: An emotion classification dataset collected from the social media platform Twitter. The dataset consists of around 4000 Indonesian colloquial language tweets, covering five different emotion labels: anger, fear, happy, love, and sadness
642
+ 2. `SmSA`: This sentence-level sentiment analysis dataset is a collection of comments and reviews in Indonesian obtained from multiple online platforms. The text was crawled and then annotated by several Indonesian linguists to construct this dataset. There are three possible sentiments on the `SmSA` dataset: positive, negative, and neutral
643
+ 3. `CASA`: An aspect-based sentiment analysis dataset consisting of around a thousand car reviews collected from multiple Indonesian online automobile platforms. The dataset covers six aspects of car quality. We define the task to be a multi-label classification task, where each label represents a sentiment for a single aspect with three possible values: positive, negative, and neutral.
644
+ 4. `HoASA`: An aspect-based sentiment analysis dataset consisting of hotel reviews collected from the hotel aggregator platform, [AiryRooms](https://github.com/annisanurulazhar/absa-playground). The dataset covers ten different aspects of hotel quality. Similar to the `CASA` dataset, each review is labeled with a single sentiment label for each aspect. There are four possible sentiment classes for each sentiment label: positive, negative, neutral, and positive-negative. The positivenegative label is given to a review that contains multiple sentiments of the same aspect but for different objects (e.g., cleanliness of bed and toilet).
645
+ 5. `WReTE`: The Wiki Revision Edits Textual Entailment dataset consists of 450 sentence pairs constructed from Wikipedia revision history. The dataset contains pairs of sentences and binary semantic relations between the pairs. The data are labeled as entailed when the meaning of the second sentence can be derived from the first one, and not entailed otherwise.
646
+ 6. `POSP`: This Indonesian part-of-speech tagging (POS) dataset is collected from Indonesian news websites. The dataset consists of around 8000 sentences with 26 POS tags. The POS tag labels follow the [Indonesian Association of Computational Linguistics (INACL) POS Tagging Convention](http://inacl.id/inacl/wp-content/uploads/2017/06/INACL-POS-Tagging-Convention-26-Mei.pdf).
647
+ 7. `BaPOS`: This POS tagging dataset contains about 1000 sentences, collected from the [PAN Localization Project](http://www.panl10n.net/). In this dataset, each word is tagged by one of [23 POS tag classes](https://bahasa.cs.ui.ac.id/postag/downloads/Tagset.pdf). Data splitting used in this benchmark follows the experimental setting used by [Kurniawan and Aji (2018)](https://arxiv.org/abs/1809.03391).
648
+ 8. `TermA`: This span-extraction dataset is collected from the hotel aggregator platform, [AiryRooms](https://github.com/jordhy97/final_project). The dataset consists of thousands of hotel reviews, which each contain a span label for aspect and sentiment words representing the opinion of the reviewer on the corresponding aspect. The labels use Inside-Outside-Beginning (IOB) tagging representation with two kinds of tags, aspect and sentiment.
649
+ 9. `KEPS`: This keyphrase extraction dataset consists of text from Twitter discussing banking products and services and is written in the Indonesian language. A phrase containing important information is considered a keyphrase. Text may contain one or more keyphrases since important phrases can be located at different positions. The dataset follows the IOB chunking format, which represents the position of the keyphrase.
650
+ 10. `NERGrit`: This NER dataset is taken from the [Grit-ID repository](https://github.com/grit-id/nergrit-corpus), and the labels are spans in IOB chunking representation. The dataset consists of three kinds of named entity tags, PERSON (name of person), PLACE (name of location), and ORGANIZATION (name of organization).
651
+ 11. `NERP`: This NER dataset (Hoesen and Purwarianti, 2018) contains texts collected from several Indonesian news websites. There are five labels available in this dataset, PER (name of person), LOC (name of location), IND (name of product or brand), EVT (name of the event), and FNB (name of food and beverage). Similar to the `TermA` dataset, the `NERP` dataset uses the IOB chunking format.
652
+ 12. `FacQA`: The goal of the FacQA dataset is to find the answer to a question from a provided short passage from a news article. Each row in the FacQA dataset consists of a question, a short passage, and a label phrase, which can be found inside the corresponding short passage. There are six categories of questions: date, location, name, organization, person, and quantitative.
653
+
654
+ ### Supported Tasks and Leaderboards
655
+
656
+ [Needs More Information]
657
+
658
+ ### Languages
659
+
660
+ Indonesian
661
+
662
+ ## Dataset Structure
663
+
664
+ ### Data Instances
665
+
666
+ 1. `EmoT` dataset
667
+
668
+ A data point consists of `tweet` and `label`. An example from the train set looks as follows:
669
+ ```
670
+ {
671
+ 'tweet': 'Ini adalah hal yang paling membahagiakan saat biasku foto bersama ELF #ReturnOfTheLittlePrince #HappyHeeChulDay'
672
+ 'label': 4,
673
+ }
674
+ ```
675
+
676
+ 2. `SmSA` dataset
677
+
678
+ A data point consists of `text` and `label`. An example from the train set looks as follows:
679
+ ```
680
+ {
681
+ 'text': 'warung ini dimiliki oleh pengusaha pabrik tahu yang sudah puluhan tahun terkenal membuat tahu putih di bandung . tahu berkualitas , dipadu keahlian memasak , dipadu kretivitas , jadilah warung yang menyajikan menu utama berbahan tahu , ditambah menu umum lain seperti ayam . semuanya selera indonesia . harga cukup terjangkau . jangan lewatkan tahu bletoka nya , tidak kalah dengan yang asli dari tegal !'
682
+ 'label': 0,
683
+ }
684
+ ```
685
+
686
+ 3. `CASA` dataset
687
+
688
+ A data point consists of `sentence` and multi-label `feature`, `machine`, `others`, `part`, `price`, and `service`. An example from the train set looks as follows:
689
+ ```
690
+ {
691
+ 'sentence': 'Saya memakai Honda Jazz GK5 tahun 2014 ( pertama meluncur ) . Mobil nya bagus dan enak sesuai moto nya menyenangkan untuk dikendarai',
692
+ 'fuel': 1,
693
+ 'machine': 1,
694
+ 'others': 2,
695
+ 'part': 1,
696
+ 'price': 1,
697
+ 'service': 1
698
+ }
699
+ ```
700
+
701
+ 4. `HoASA` dataset
702
+
703
+ A data point consists of `sentence` and multi-label `ac`, `air_panas`, `bau`, `general`, `kebersihan`, `linen`, `service`, `sunrise_meal`, `tv`, and `wifi`. An example from the train set looks as follows:
704
+ ```
705
+ {
706
+ 'sentence': 'kebersihan kurang...',
707
+ 'ac': 1,
708
+ 'air_panas': 1,
709
+ 'bau': 1,
710
+ 'general': 1,
711
+ 'kebersihan': 0,
712
+ 'linen': 1,
713
+ 'service': 1,
714
+ 'sunrise_meal': 1,
715
+ 'tv': 1,
716
+ 'wifi': 1
717
+ }
718
+ ```
719
+
720
+ 5. `WreTE` dataset
721
+
722
+ A data point consists of `premise`, `hypothesis`, `category`, and `label`. An example from the train set looks as follows:
723
+ ```
724
+ {
725
+ 'premise': 'Pada awalnya bangsa Israel hanya terdiri dari satu kelompok keluarga di antara banyak kelompok keluarga yang hidup di tanah Kanan pada abad 18 SM .',
726
+ 'hypothesis': 'Pada awalnya bangsa Yahudi hanya terdiri dari satu kelompok keluarga di antara banyak kelompok keluarga yang hidup di tanah Kanan pada abad 18 SM .'
727
+ 'category': 'menolak perubahan teks terakhir oleh istimewa kontribusi pengguna 141 109 98 87 141 109 98 87 dan mengembalikan revisi 6958053 oleh johnthorne',
728
+ 'label': 0,
729
+ }
730
+ ```
731
+
732
+ 6. `POSP` dataset
733
+
734
+ A data point consists of `tokens` and `pos_tags`. An example from the train set looks as follows:
735
+ ```
736
+ {
737
+ 'tokens': ['kepala', 'dinas', 'tata', 'kota', 'manado', 'amos', 'kenda', 'menyatakan', 'tidak', 'tahu', '-', 'menahu', 'soal', 'pencabutan', 'baliho', '.', 'ia', 'enggan', 'berkomentar', 'banyak', 'karena', 'merasa', 'bukan', 'kewenangannya', '.'],
738
+ 'pos_tags': [11, 6, 11, 11, 7, 7, 7, 9, 23, 4, 21, 9, 11, 11, 11, 21, 3, 2, 4, 1, 19, 9, 23, 11, 21]
739
+ }
740
+ ```
741
+
742
+ 7. `BaPOS` dataset
743
+
744
+ A data point consists of `tokens` and `pos_tags`. An example from the train set looks as follows:
745
+ ```
746
+ {
747
+ 'tokens': ['Kera', 'untuk', 'amankan', 'pesta', 'olahraga'],
748
+ 'pos_tags': [27, 8, 26, 27, 30]
749
+ }
750
+ ```
751
+
752
+ 8. `TermA` dataset
753
+
754
+ A data point consists of `tokens` and `seq_label`. An example from the train set looks as follows:
755
+ ```
756
+ {
757
+ 'tokens': ['kamar', 'saya', 'ada', 'kendala', 'di', 'ac', 'tidak', 'berfungsi', 'optimal', '.', 'dan', 'juga', 'wifi', 'koneksi', 'kurang', 'stabil', '.'],
758
+ 'seq_label': [1, 1, 1, 1, 1, 4, 3, 0, 0, 1, 1, 1, 4, 2, 3, 0, 1]
759
+ }
760
+ ```
761
+
762
+ 9. `KEPS` dataset
763
+
764
+ A data point consists of `tokens` and `seq_label`. An example from the train set looks as follows:
765
+ ```
766
+ {
767
+ 'tokens': ['Setelah', 'melalui', 'proses', 'telepon', 'yang', 'panjang', 'tutup', 'sudah', 'kartu', 'kredit', 'bca', 'Ribet'],
768
+ 'seq_label': [0, 1, 1, 2, 0, 0, 1, 0, 1, 2, 2, 1]
769
+ }
770
+ ```
771
+
772
+ 10. `NERGrit` dataset
773
+
774
+ A data point consists of `tokens` and `ner_tags`. An example from the train set looks as follows:
775
+ ```
776
+ {
777
+ 'tokens': ['Kontribusinya', 'terhadap', 'industri', 'musik', 'telah', 'mengumpulkan', 'banyak', 'prestasi', 'termasuk', 'lima', 'Grammy', 'Awards', ',', 'serta', 'dua', 'belas', 'nominasi', ';', 'dua', 'Guinness', 'World', 'Records', ';', 'dan', 'penjualannya', 'diperkirakan', 'sekitar', '64', 'juta', 'rekaman', '.'],
778
+ 'ner_tags': [5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5, 5]}
779
+ ```
780
+
781
+ 11. `NERP` dataset
782
+
783
+ A data point consists of `tokens` and `ner_tags`. An example from the train set looks as follows:
784
+ ```
785
+ {
786
+ 'tokens': ['kepala', 'dinas', 'tata', 'kota', 'manado', 'amos', 'kenda', 'menyatakan', 'tidak', 'tahu', '-', 'menahu', 'soal', 'pencabutan', 'baliho', '.', 'ia', 'enggan', 'berkomentar', 'banyak', 'karena', 'merasa', 'bukan', 'kewenangannya', '.'],
787
+ 'ner_tags': [9, 9, 9, 9, 2, 7, 0, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9, 9]
788
+ }
789
+ ```
790
+
791
+ 12. `FacQA` dataset
792
+
793
+ A data point consists of `question`, `passage`, and `seq_label`. An example from the train set looks as follows:
794
+ ```
795
+ {
796
+ 'passage': ['Lewat', 'telepon', 'ke', 'kantor', 'berita', 'lokal', 'Current', 'News', 'Service', ',', 'Hezb-ul', 'Mujahedeen', ',', 'kelompok', 'militan', 'Kashmir', 'yang', 'terbesar', ',', 'menyatakan', 'bertanggung', 'jawab', 'atas', 'ledakan', 'di', 'Srinagar', '.'],
797
+ 'question': ['Kelompok', 'apakah', 'yang', 'menyatakan', 'bertanggung', 'jawab', 'atas', 'ledakan', 'di', 'Srinagar', '?'],
798
+ 'seq_label': [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 1, 2, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0]
799
+ }
800
+ ```
801
+
802
+ ### Data Fields
803
+
804
+ 1. `EmoT` dataset
805
+
806
+ - `tweet`: a `string` feature.
807
+ - `label`: an emotion label, with possible values including `sadness`, `anger`, `love`, `fear`, `happy`.
808
+
809
+ 2. `SmSA` dataset
810
+
811
+ - `text`: a `string` feature.
812
+ - `label`: a sentiment label, with possible values including `positive`, `neutral`, `negative`.
813
+
814
+ 3. `CASA` dataset
815
+
816
+ - `sentence`: a `string` feature.
817
+ - `fuel`: a sentiment label, with possible values including `negative`, `neutral`, `positive`.
818
+ - `machine`: a sentiment label, with possible values including `negative`, `neutral`, `positive`.
819
+ - `others`: a sentiment label, with possible values including `negative`, `neutral`, `positive`.
820
+ - `part`: a sentiment label, with possible values including `negative`, `neutral`, `positive`.
821
+ - `price`: a sentiment label, with possible values including `negative`, `neutral`, `positive`.
822
+ - `service`: a sentiment label, with possible values including `negative`, `neutral`, `positive`.
823
+
824
+ 4. `HoASA` dataset
825
+
826
+ - `sentence`: a `string` feature.
827
+ - `ac`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
828
+ - `air_panas`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
829
+ - `bau`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
830
+ - `general`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
831
+ - `kebersihan`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
832
+ - `linen`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
833
+ - `service`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
834
+ - `sunrise_meal`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
835
+ - `tv`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
836
+ - `wifi`: a sentiment label, with possible values including `neg`, `neut`, `pos`, `neg_pos`.
837
+
838
+ 5. `WReTE` dataset
839
+
840
+ - `premise`: a `string` feature.
841
+ - `hypothesis`: a `string` feature.
842
+ - `category`: a `string` feature.
843
+ - `label`: a classification label, with possible values including `NotEntail`, `Entail_or_Paraphrase`.
844
+
845
+ 6. `POSP` dataset
846
+
847
+ - `tokens`: a `list` of `string` features.
848
+ - `pos_tags`: a `list` of POS tag labels, with possible values including `B-PPO`, `B-KUA`, `B-ADV`, `B-PRN`, `B-VBI`.
849
+
850
+ The POS tag labels follow the [Indonesian Association of Computational Linguistics (INACL) POS Tagging Convention](http://inacl.id/inacl/wp-content/uploads/2017/06/INACLPOS-Tagging-Convention-26-Mei.pdf).
851
+
852
+ 7. `BaPOS` dataset
853
+
854
+ - `tokens`: a `list` of `string` features.
855
+ - `pos_tags`: a `list` of POS tag labels, with possible values including `B-PR`, `B-CD`, `I-PR`, `B-SYM`, `B-JJ`.
856
+
857
+ The POS tag labels from [Tagset UI](https://bahasa.cs.ui.ac.id/postag/downloads/Tagset.pdf).
858
+
859
+ 8. `TermA` dataset
860
+
861
+ - `tokens`: a `list` of `string` features.
862
+ - `seq_label`: a `list` of classification labels, with possible values including `I-SENTIMENT`, `O`, `I-ASPECT`, `B-SENTIMENT`, `B-ASPECT`.
863
+
864
+ 9. `KEPS` dataset
865
+
866
+ - `tokens`: a `list` of `string` features.
867
+ - `seq_label`: a `list` of classification labels, with possible values including `O`, `B`, `I`.
868
+
869
+ The labels use Inside-Outside-Beginning (IOB) tagging.
870
+
871
+ 10. `NERGrit` dataset
872
+
873
+ - `tokens`: a `list` of `string` features.
874
+ - `ner_tags`: a `list` of NER tag labels, with possible values including `I-PERSON`, `B-ORGANISATION`, `I-ORGANISATION`, `B-PLACE`, `I-PLACE`.
875
+
876
+ The labels use Inside-Outside-Beginning (IOB) tagging.
877
+
878
+ 11. `NERP` dataset
879
+
880
+ - `tokens`: a `list` of `string` features.
881
+ - `ner_tags`: a `list` of NER tag labels, with possible values including `I-PPL`, `B-EVT`, `B-PLC`, `I-IND`, `B-IND`.
882
+
883
+ 12. `FacQA` dataset
884
+
885
+ - `question`: a `list` of `string` features.
886
+ - `passage`: a `list` of `string` features.
887
+ - `seq_label`: a `list` of classification labels, with possible values including `O`, `B`, `I`.
888
+
889
+ ### Data Splits
890
+
891
+ The data is split into a training, validation and test set.
892
+
893
+ | | dataset | Train | Valid | Test |
894
+ |----|---------|-------|-------|------|
895
+ | 1 | EmoT | 3521 | 440 | 440 |
896
+ | 2 | SmSA | 11000 | 1260 | 500 |
897
+ | 3 | CASA | 810 | 90 | 180 |
898
+ | 4 | HoASA | 2283 | 285 | 286 |
899
+ | 5 | WReTE | 300 | 50 | 100 |
900
+ | 6 | POSP | 6720 | 840 | 840 |
901
+ | 7 | BaPOS | 8000 | 1000 | 1029 |
902
+ | 8 | TermA | 3000 | 1000 | 1000 |
903
+ | 9 | KEPS | 800 | 200 | 247 |
904
+ | 10 | NERGrit | 1672 | 209 | 209 |
905
+ | 11 | NERP | 6720 | 840 | 840 |
906
+ | 12 | FacQA | 2495 | 311 | 311 |
907
+
908
+ ## Dataset Creation
909
+
910
+ ### Curation Rationale
911
+
912
+ [Needs More Information]
913
+
914
+ ### Source Data
915
+
916
+ #### Initial Data Collection and Normalization
917
+
918
+ [Needs More Information]
919
+
920
+ #### Who are the source language producers?
921
+
922
+ [Needs More Information]
923
+
924
+ ### Annotations
925
+
926
+ #### Annotation process
927
+
928
+ [Needs More Information]
929
+
930
+ #### Who are the annotators?
931
+
932
+ [Needs More Information]
933
+
934
+ ### Personal and Sensitive Information
935
+
936
+ [Needs More Information]
937
+
938
+ ## Considerations for Using the Data
939
+
940
+ ### Social Impact of Dataset
941
+
942
+ [Needs More Information]
943
+
944
+ ### Discussion of Biases
945
+
946
+ [Needs More Information]
947
+
948
+ ### Other Known Limitations
949
+
950
+ [Needs More Information]
951
+
952
+ ## Additional Information
953
+
954
+ ### Dataset Curators
955
+
956
+ [Needs More Information]
957
+
958
+ ### Licensing Information
959
+
960
+ The licensing status of the IndoNLU benchmark datasets is under MIT License.
961
+
962
+ ### Citation Information
963
+
964
+ IndoNLU citation
965
+ ```
966
+ @inproceedings{wilie2020indonlu,
967
+ title={IndoNLU: Benchmark and Resources for Evaluating Indonesian Natural Language Understanding},
968
+ author={Bryan Wilie and Karissa Vincentio and Genta Indra Winata and Samuel Cahyawijaya and X. Li and Zhi Yuan Lim and S. Soleman and R. Mahendra and Pascale Fung and Syafri Bahar and A. Purwarianti},
969
+ booktitle={Proceedings of the 1st Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics and the 10th International Joint Conference on Natural Language Processing},
970
+ year={2020}
971
+ }
972
+ ```
973
+
974
+ `EmoT` dataset citation
975
+ ```
976
+ @inproceedings{saputri2018emotion,
977
+ title={Emotion Classification on Indonesian Twitter Dataset},
978
+ author={Mei Silviana Saputri, Rahmad Mahendra, and Mirna Adriani},
979
+ booktitle={Proceedings of the 2018 International Conference on Asian Language Processing(IALP)},
980
+ pages={90--95},
981
+ year={2018},
982
+ organization={IEEE}
983
+ }
984
+ ```
985
+
986
+ `SmSA` dataset citation
987
+ ```
988
+ @inproceedings{purwarianti2019improving,
989
+ title={Improving Bi-LSTM Performance for Indonesian Sentiment Analysis Using Paragraph Vector},
990
+ author={Ayu Purwarianti and Ida Ayu Putu Ari Crisdayanti},
991
+ booktitle={Proceedings of the 2019 International Conference of Advanced Informatics: Concepts, Theory and Applications (ICAICTA)},
992
+ pages={1--5},
993
+ year={2019},
994
+ organization={IEEE}
995
+ }
996
+ ```
997
+
998
+ `CASA` dataset citation
999
+ ```
1000
+ @inproceedings{ilmania2018aspect,
1001
+ title={Aspect Detection and Sentiment Classification Using Deep Neural Network for Indonesian Aspect-based Sentiment Analysis},
1002
+ author={Arfinda Ilmania, Abdurrahman, Samuel Cahyawijaya, Ayu Purwarianti},
1003
+ booktitle={Proceedings of the 2018 International Conference on Asian Language Processing(IALP)},
1004
+ pages={62--67},
1005
+ year={2018},
1006
+ organization={IEEE}
1007
+ }
1008
+ ```
1009
+
1010
+ `HoASA` dataset citation
1011
+ ```
1012
+ @inproceedings{azhar2019multi,
1013
+ title={Multi-label Aspect Categorization with Convolutional Neural Networks and Extreme Gradient Boosting},
1014
+ author={A. N. Azhar, M. L. Khodra, and A. P. Sutiono}
1015
+ booktitle={Proceedings of the 2019 International Conference on Electrical Engineering and Informatics (ICEEI)},
1016
+ pages={35--40},
1017
+ year={2019}
1018
+ }
1019
+ ```
1020
+
1021
+ `WReTE` dataset citation
1022
+ ```
1023
+ @inproceedings{setya2018semi,
1024
+ title={Semi-supervised Textual Entailment on Indonesian Wikipedia Data},
1025
+ author={Ken Nabila Setya and Rahmad Mahendra},
1026
+ booktitle={Proceedings of the 2018 International Conference on Computational Linguistics and Intelligent Text Processing (CICLing)},
1027
+ year={2018}
1028
+ }
1029
+ ```
1030
+
1031
+ `POSP` dataset citation
1032
+ ```
1033
+ @inproceedings{hoesen2018investigating,
1034
+ title={Investigating Bi-LSTM and CRF with POS Tag Embedding for Indonesian Named Entity Tagger},
1035
+ author={Devin Hoesen and Ayu Purwarianti},
1036
+ booktitle={Proceedings of the 2018 International Conference on Asian Language Processing (IALP)},
1037
+ pages={35--38},
1038
+ year={2018},
1039
+ organization={IEEE}
1040
+ }
1041
+ ```
1042
+
1043
+ `BaPOS` dataset citation
1044
+ ```
1045
+ @inproceedings{dinakaramani2014designing,
1046
+ title={Designing an Indonesian Part of Speech Tagset and Manually Tagged Indonesian Corpus},
1047
+ author={Arawinda Dinakaramani, Fam Rashel, Andry Luthfi, and Ruli Manurung},
1048
+ booktitle={Proceedings of the 2014 International Conference on Asian Language Processing (IALP)},
1049
+ pages={66--69},
1050
+ year={2014},
1051
+ organization={IEEE}
1052
+ }
1053
+ @inproceedings{kurniawan2018toward,
1054
+ title={Toward a Standardized and More Accurate Indonesian Part-of-Speech Tagging},
1055
+ author={Kemal Kurniawan and Alham Fikri Aji},
1056
+ booktitle={Proceedings of the 2018 International Conference on Asian Language Processing (IALP)},
1057
+ pages={303--307},
1058
+ year={2018},
1059
+ organization={IEEE}
1060
+ }
1061
+ ```
1062
+
1063
+ `TermA` dataset citation
1064
+ ```
1065
+ @article{winatmoko2019aspect,
1066
+ title={Aspect and Opinion Term Extraction for Hotel Reviews Using Transfer Learning and Auxiliary Labels},
1067
+ author={Yosef Ardhito Winatmoko, Ali Akbar Septiandri, Arie Pratama Sutiono},
1068
+ journal={arXiv preprint arXiv:1909.11879},
1069
+ year={2019}
1070
+ }
1071
+ @article{fernando2019aspect,
1072
+ title={Aspect and Opinion Terms Extraction Using Double Embeddings and Attention Mechanism for Indonesian Hotel Reviews},
1073
+ author={Jordhy Fernando, Masayu Leylia Khodra, Ali Akbar Septiandri},
1074
+ journal={arXiv preprint arXiv:1908.04899},
1075
+ year={2019}
1076
+ }
1077
+ ```
1078
+
1079
+ `KEPS` dataset citation
1080
+ ```
1081
+ @inproceedings{mahfuzh2019improving,
1082
+ title={Improving Joint Layer RNN based Keyphrase Extraction by Using Syntactical Features},
1083
+ author={Miftahul Mahfuzh, Sidik Soleman, and Ayu Purwarianti},
1084
+ booktitle={Proceedings of the 2019 International Conference of Advanced Informatics: Concepts, Theory and Applications (ICAICTA)},
1085
+ pages={1--6},
1086
+ year={2019},
1087
+ organization={IEEE}
1088
+ }
1089
+ ```
1090
+
1091
+ `NERGrit` dataset citation
1092
+ ```
1093
+ @online{nergrit2019,
1094
+ title={NERGrit Corpus},
1095
+ author={NERGrit Developers},
1096
+ year={2019},
1097
+ url={https://github.com/grit-id/nergrit-corpus}
1098
+ }
1099
+ ```
1100
+
1101
+ `NERP` dataset citation
1102
+ ```
1103
+ @inproceedings{hoesen2018investigating,
1104
+ title={Investigating Bi-LSTM and CRF with POS Tag Embedding for Indonesian Named Entity Tagger},
1105
+ author={Devin Hoesen and Ayu Purwarianti},
1106
+ booktitle={Proceedings of the 2018 International Conference on Asian Language Processing (IALP)},
1107
+ pages={35--38},
1108
+ year={2018},
1109
+ organization={IEEE}
1110
+ }
1111
+ ```
1112
+
1113
+ `FacQA` dataset citation
1114
+ ```
1115
+ @inproceedings{purwarianti2007machine,
1116
+ title={A Machine Learning Approach for Indonesian Question Answering System},
1117
+ author={Ayu Purwarianti, Masatoshi Tsuchiya, and Seiichi Nakagawa},
1118
+ booktitle={Proceedings of Artificial Intelligence and Applications },
1119
+ pages={573--578},
1120
+ year={2007}
1121
+ }
1122
+ ```
1123
+
1124
+ ### Contributions
1125
+
1126
+ Thanks to [@yasirabd](https://github.com/yasirabd) for adding this dataset.
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