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Error code: DatasetGenerationCastError Exception: DatasetGenerationCastError Message: An error occurred while generating the dataset All the data files must have the same columns, but at some point there are 2 missing columns ({'intentClass', 'slotClasses'}) This happened while the csv dataset builder was generating data using hf://datasets/Matrix430/CONDA/test.csv (at revision 31f2cdc6bff5ad6def58e07d3c3549dc393bc086) Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations) Traceback: Traceback (most recent call last): File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 2011, in _prepare_split_single writer.write_table(table) File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/arrow_writer.py", line 585, in write_table pa_table = table_cast(pa_table, self._schema) File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/table.py", line 2302, in table_cast return cast_table_to_schema(table, schema) File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/table.py", line 2256, in cast_table_to_schema raise CastError( datasets.table.CastError: Couldn't cast Id: int64 utterance: string tokenized: string matchId: int64 conversationId: int64 chatTime: int64 -- schema metadata -- pandas: '{"index_columns": [{"kind": "range", "name": null, "start": 0, "' + 948 to {'Id': Value(dtype='int64', id=None), 'utterance': Value(dtype='string', id=None), 'tokenized': Value(dtype='string', id=None), 'intentClass': Value(dtype='string', id=None), 'slotClasses': Value(dtype='string', id=None), 'matchId': Value(dtype='int64', id=None), 'conversationId': Value(dtype='int64', id=None), 'chatTime': Value(dtype='int64', id=None)} because column names don't match During handling of the above exception, another exception occurred: Traceback (most recent call last): File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1321, in compute_config_parquet_and_info_response parquet_operations = convert_to_parquet(builder) File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 935, in convert_to_parquet builder.download_and_prepare( File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1027, in download_and_prepare self._download_and_prepare( File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1122, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1882, in _prepare_split for job_id, done, content in self._prepare_split_single( File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 2013, in _prepare_split_single raise DatasetGenerationCastError.from_cast_error( datasets.exceptions.DatasetGenerationCastError: An error occurred while generating the dataset All the data files must have the same columns, but at some point there are 2 missing columns ({'intentClass', 'slotClasses'}) This happened while the csv dataset builder was generating data using hf://datasets/Matrix430/CONDA/test.csv (at revision 31f2cdc6bff5ad6def58e07d3c3549dc393bc086) Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)
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Id
int64 | utterance
string | tokenized
string | intentClass
string | slotClasses
string | matchId
int64 | conversationId
int64 | chatTime
int64 |
---|---|---|---|---|---|---|---|
11,263 | wow! | wow | O | O | 697 | 3,193 | 76 |
13,741 | WTF | WTF | O | T | 843 | 3,809 | 1,563 |
22,125 | wpe wpe | wpe wpe | O | O O | 1,412 | 6,199 | 2,853 |
6,453 | hahaha | hahaha | O | O | 439 | 1,875 | 1,038 |
9,644 | wtf | wtf | O | T | 601 | 2,713 | 1,661 |
6,208 | i cant [SEPA] play [SEPA] with 4 trash | i cant [SEPA] play [SEPA] with 4 trash | E | P O SEPA O SEPA O O O | 433 | 1,836 | 1,674 |
38,968 | bg | bg | O | O | 2,572 | 10,979 | 2,875 |
3,213 | =) [SEPA] ty | #ERROR! | O | O | 240 | 999 | 1,797 |
44,326 | gg [SEPA] report my team rat [SEPA] please | gg [SEPA] report my team rat [SEPA] please | A | S SEPA S P O S SEPA O | 3,001 | 12,737 | 2,602 |
30,888 | ez mid | ez mid | I | S S | 2,020 | 8,676 | 3,044 |
4,993 | hahah | hahah | O | O | 343 | 1,469 | 2,000 |
5,736 | my arrows [SEPA] always decent [SEPA] fuck u | my arrows [SEPA] always decent [SEPA] fuck u | E | P O SEPA O O SEPA T P | 408 | 1,717 | 1,955 |
33,772 | gh | gh | O | O | 2,229 | 9,529 | 1,071 |
37,524 | always engage at bot, lc cant takle bot then top | always engage at bot lc cant takle bot then top | O | O O O S D O O S O S | 2,464 | 10,554 | 1,165 |
36,088 | cmon | cmon | O | O | 2,366 | 10,203 | 2,833 |
33,901 | the comeback is real. :) | the comeback is real :) | O | O O O O O | 2,236 | 9,556 | 2,207 |
21,047 | him mid vs me | him mid vs me | O | P S O P | 1,336 | 5,855 | 2,572 |
43,817 | just end [SEPA] i wan nex game | just end [SEPA] i wan nex game | O | O O SEPA P O O O | 2,961 | 12,556 | 2,617 |
36,694 | g? | g | A | O | 2,411 | 10,330 | -68 |
44,212 | he is not losing | he is not losing | O | P O O O | 2,994 | 12,700 | 2,001 |
43,049 | Pls report sb thanks | Pls report sb thanks | A | O S C O | 2,900 | 12,271 | 864 |
39,334 | omg | omg | O | O | 2,617 | 11,133 | 2,605 |
10,429 | ggwp | ggwp | O | S | 654 | 2,960 | 3,772 |
1,874 | WP cap | WP cap | O | S O | 149 | 613 | 2,208 |
14,416 | lo [SEPA] lol | lo [SEPA] lol | O | O SEPA O | 878 | 3,972 | -6 |
8,653 | fuyckjerfe | fuyckjerfe | E | O | 532 | 2,399 | 1,057 |
34,988 | gg noob mid invoker | gg noob mid invoker | E | S T S C | 2,314 | 9,898 | 989 |
7,644 | i mean not everyone on ur team is dumb enough to rot down to 20% hp | i mean not everyone on ur team is dumb enough to rot down to 2 hp | E | P O O P O P O O T P O D O O O O | 491 | 2,154 | 706 |
32,480 | 8 7? | 8 | O | O | 2,126 | 9,121 | 2,755 |
33,025 | it just random | it just random | O | P O O | 2,173 | 9,307 | 1,434 |
650 | :/ | :/ | O | O | 59 | 222 | 1,726 |
30,513 | u dead [SEPA] .i. | u dead [SEPA] i | O | P T SEPA P | 1,986 | 8,555 | 1,588 |
35,218 | he just keeps charhing [SEPA] since spectre comited ult [SEPA] so did I :D [SEPA] i thought they will go for more blood [SEPA] but whatever | he just keeps charhing [SEPA] since spectre comited ult [SEPA] so did I :D [SEPA] i thought they will go for more blood [SEPA] but whatever | O | P O O O SEPA O C O S SEPA O O P O SEPA P O P O S O O S SEPA O P | 2,324 | 9,954 | 2,096 |
7,740 | me too | me too | O | P O | 493 | 2,168 | 2,165 |
27,300 | gg ty for mmr | gg ty for mmr | O | S O O D | 1,760 | 7,635 | 1,758 |
34,870 | gg | gg | O | S | 2,307 | 9,851 | 1,898 |
34,322 | you know you can take the mana thing out of the mana boots | you know you can take the mana thing out of the mana boots | O | P O P O S O S O O O O S D | 2,270 | 9,692 | 1,984 |
24,708 | u gave me free farm [SEPA] u could kill me 100 times | u gave me free farm [SEPA] u could kill me 100 times | O | P O P O S SEPA P O O P O O | 1,579 | 6,939 | 1,562 |
21,208 | wp [SEPA] legoin report | wp [SEPA] legoin report | A | S SEPA O S | 1,348 | 5,900 | 5,448 |
37,184 | WP m8 [SEPA] nice game but too many shit talk [SEPA] thx sea [SEPA] too many cancer talktalktalk | WP m8 [SEPA] nice game but too many shit talk [SEPA] thx sea [SEPA] too many cancer talktalktalk | O | S O SEPA O O O O P T O SEPA O O SEPA O P S O | 2,443 | 10,453 | 2,740 |
14,480 | SHIT | SHIT | E | T | 881 | 3,989 | 1,776 |
7,000 | talking to my boy alch | talking to my boy alch | O | O O P O C | 462 | 2,005 | 1,764 |
13,589 | TIME FOR A BIT OF RO SHAM BO | TIME FOR A BIT OF RO SHAM BO | O | O O O O O O O O | 833 | 3,767 | 1,356 |
42,883 | COMEND DOOM IN LEGION | COMEND DOOM IN LEGION | A | O C O C | 2,888 | 12,219 | 1,630 |
17,055 | greedy | greedy | O | O | 1,050 | 4,719 | 609 |
22,468 | dont def [SEPA] noob team | dont def [SEPA] noob team | E | O O SEPA T O | 1,428 | 6,291 | 2,134 |
42,423 | gg | gg | O | S | 2,855 | 12,072 | 1,568 |
24,740 | spectre isnt meant to win the lane | spectre isnt meant to win the lane | O | C O O O O O S | 1,580 | 6,947 | 3,685 |
257 | shit [SEPA] SHIT [SEPA] SHIT [SEPA] SHITTT! :) | shit [SEPA] SHIT [SEPA] SHIT [SEPA] SHITTT :) | E | T SEPA T SEPA T SEPA O O | 29 | 105 | 2,926 |
18,966 | sad bs | sad bs | O | O S | 1,178 | 5,283 | 1,916 |
3,045 | ez | ez | I | S | 227 | 956 | 2,542 |
11,994 | T T QOP | T T QOP | O | O O C | 749 | 3,427 | -59 |
20,971 | you guys win this fag went mid [SEPA] so fucking bad mid | you guys win this fag went mid [SEPA] so fucking bad mid | E | P P O P T O S SEPA O T O S | 1,331 | 5,833 | 2,132 |
34,245 | Alche and lycan | Alche and lycan | O | C O C | 2,262 | 9,652 | 2,062 |
33,681 | Rip | Rip | O | O | 2,226 | 9,524 | 827 |
34,563 | singing siren ,dancing jugg | singing siren dancing jugg | O | O O O C | 2,284 | 9,756 | 1,645 |
27,700 | ez game | ez game | I | S O | 1,786 | 7,748 | 2,769 |
26,479 | meeporino feederino | meeporino feederino | O | C O | 1,705 | 7,419 | 1,246 |
1,939 | ur asshole | ur asshole | E | P T | 153 | 622 | 1,990 |
4,236 | Thats all I gotta say [SEPA] Drow 2-5 | Thats all I gotta say [SEPA] Drow 5 | I | P P P O O SEPA C O | 310 | 1,315 | 1,534 |
40,002 | COMMEND | COMMEND | A | O | 2,651 | 11,331 | 2,440 |
35,761 | lowskill shits [SEPA] all you have to do is dive endlessly [SEPA] and this cunt silencer and invoekr [SEPA] let you win | lowskill shits [SEPA] all you have to do is dive endlessly [SEPA] and this cunt silencer and invoekr [SEPA] let you win | E | O T SEPA P P O O O O S O SEPA O P T C O C SEPA O P O | 2,352 | 10,113 | 1,975 |
40,923 | tnx for the russian team obama....could have at least nuked putin | tnx for the russian team obama could have at least nuked putin | E | O O O O O O O O O O O O | 2,727 | 11,630 | -27 |
2,468 | wise ffs [SEPA] can youi stop inviting strangers to fuck your grandmothers' corpse ? | wise ffs [SEPA] can youi stop inviting strangers to fuck your grandmothers corpse | E | O T SEPA O O O O O O T P O O | 183 | 761 | -40 |
23,502 | nice | nice | O | O | 1,498 | 6,621 | 1,691 |
34,128 | heng i never die | heng i never die | E | O P O O | 2,257 | 9,621 | 2,237 |
6,531 | We all randomed | We all randomed | O | P P O | 441 | 1,891 | -63 |
36,835 | golden medal for u lc | golden medal for u lc | O | O O O P D | 2,413 | 10,362 | 2,787 |
27,604 | GG lag | GG lag | O | S O | 1,780 | 7,715 | 2,105 |
4,223 | HAHA | HAHA | O | O | 310 | 1,312 | 840 |
37,287 | btw AM nice blink into stun :D | btw AM nice blink into stun :D | O | O C O D O S O | 2,453 | 10,485 | 758 |
39,369 | who care [SEPA] ? | who care [SEPA] | O | P S SEPA | 2,621 | 11,145 | 615 |
14,315 | emergency plan sry | emergency plan sry | O | O O O | 875 | 3,946 | 37 |
17,067 | i want slardar getting strong | i want slardar getting strong | O | P O C O O | 1,050 | 4,722 | 1,014 |
41,937 | ahahaha | ahahaha | O | O | 2,801 | 11,903 | 954 |
41,525 | ez tho | ez tho | I | S O | 2,764 | 11,769 | 2,075 |
7,472 | i know your feeling bro | i know your feeling bro | O | P O P O P | 484 | 2,121 | 2,548 |
23,927 | whos your daddy | whos your daddy | O | O P O | 1,526 | 6,742 | 1,316 |
15,476 | stunning | stunning | O | O | 951 | 4,261 | 3,010 |
37,103 | 5 man doto | 5 man doto | O | O P O | 2,436 | 10,436 | 2,080 |
34,107 | gg wp [SEPA] Sry for my feed | gg wp [SEPA] Sry for my feed | O | S S SEPA O O P D | 2,256 | 9,616 | 2,056 |
5,094 | dnt play storm | dnt play storm | I | O O C | 348 | 1,488 | 2,400 |
13,915 | ^LOL | LOL | O | O | 852 | 3,863 | 2,130 |
15,986 | this couldn't be won | this could not be won | O | P O O O O | 988 | 4,399 | 2,015 |
42,866 | gg wp | gg wp | O | S S | 2,887 | 12,210 | 3,914 |
14,307 | weaver mid dont worry | weaver mid dont worry | O | C S O O | 875 | 3,946 | -36 |
25,624 | trone | trone | O | S | 1,643 | 7,190 | 1,978 |
10,631 | ./. [SEPA] bm? | [SEPA] bm | O | SEPA C | 662 | 2,994 | 1,238 |
3,620 | gj guys... | gj guys | O | S P | 271 | 1,107 | 3,139 |
12,706 | gg wp | gg wp | O | S S | 781 | 3,569 | 4,119 |
36,155 | Ty | Ty | O | O | 2,373 | 10,227 | 2,166 |
43,310 | so ez [SEPA] ahahaha | so ez [SEPA] ahahaha | I | O S SEPA O | 2,919 | 12,371 | 1,599 |
28,846 | hahahai | hahahai | O | O | 1,859 | 8,065 | 453 |
27,595 | and blame us | and blame us | O | O O P | 1,780 | 7,710 | 1,123 |
37,630 | YEAAHHHHHHHHH [SEPA] GGGGGGGGGGGG | YEAAHHHHHHHHH [SEPA] GGGGGGGGGGGG | O | O SEPA S | 2,470 | 10,588 | 3,173 |
39,425 | EZ | EZ | I | S | 2,624 | 11,160 | 716 |
26,080 | aw | aw | O | O | 1,669 | 7,269 | 136 |
32,889 | and telling im too much of a solo player | and telling im too much of a solo player | O | O O O O O O O S O | 2,161 | 9,260 | 2,383 |
43,288 | He's never picked in pubs, and the only bracket he has over 50% win rate is 'very high skill' on asian servers. [SEPA] So shut up and pick something fun. [SEPA] You cucks. | He s never picked in pubs and the only bracket he has over 5 win rate is very high skill on asian servers [SEPA] So shut up and pick something fun [SEPA] You cucks | E | P O O O O O O O O O P O O O O O O O O S O O O SEPA O O O O O P O SEPA P O | 2,919 | 12,369 | 1,015 |
38,667 | 2v5 game | 2v5 game | O | O O | 2,540 | 10,886 | 2,572 |
Dataset Card for CONDA
Dataset Summary
Traditional toxicity detection models have focused on the single utterance level without deeper understanding of context. We introduce CONDA, a new dataset for in-game toxic language detection enabling joint intent classification and slot filling analysis, which is the core task of Natural Language Understanding (NLU). The dataset consists of 45K utterances from 12K conversations from the chat logs of 1.9K completed Dota 2 matches. We propose a robust dual semantic-level toxicity framework, which handles utterance and token-level patterns, and rich contextual chatting history. Accompanying the dataset is a thorough in-game toxicity analysis, which provides comprehensive understanding of context at utterance, token, and dual levels. Inspired by NLU, we also apply its metrics to the toxicity detection tasks for assessing toxicity and game-specific aspects. We evaluate strong NLU models on CONDA, providing fine-grained results for different intent classes and slot classes. Furthermore, we examine the coverage of toxicity nature in our dataset by comparing it with other toxicity datasets.
Leaderboards
The Codalab leaderboard can be found at: https://codalab.lisn.upsaclay.fr/competitions/7827
Evaluation Metrics
JSA(Joint Semantic Accuracy) is used for ranking. An utterance is deemed correctly analysed only if both utterance-level and all the token-level labels including Os are correctly predicted.
Besides, the f1 score of utterance-level E(xplicit) and I(mplicit) classes, token-level T(oxicity), D(ota-specific), S(game Slang) classes will be shown on the leaderboard (but not used as the ranking metric).
Languages
English
Video
Please enjoy a video presentation covering the main points from our paper:
Citation Information
@inproceedings{weld-etal-2021-conda,
title = "{CONDA}: a {CON}textual Dual-Annotated dataset for in-game toxicity understanding and detection",
author = "Weld, Henry and
Huang, Guanghao and
Lee, Jean and
Zhang, Tongshu and
Wang, Kunze and
Guo, Xinghong and
Long, Siqu and
Poon, Josiah and
Han, Caren",
booktitle = "Findings of the Association for Computational Linguistics: ACL-IJCNLP 2021",
month = aug,
year = "2021",
address = "Online",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/2021.findings-acl.213",
doi = "10.18653/v1/2021.findings-acl.213",
pages = "2406--2416",
}
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