Datasets:

Multilinguality:
multilingual
Size Categories:
unknown
Language Creators:
machine-generated
Annotations Creators:
expert-generated
Source Datasets:
original
ArXiv:
License:
ruanchaves julien-c HF staff commited on
Commit
0c78895
1 Parent(s): 088c9bb

Fix `license` metadata (#1)

Browse files

- Fix `license` metadata (e3454351ea8da55eda4b8bed6639e560d3824b5b)


Co-authored-by: Julien Chaumond <julien-c@users.noreply.huggingface.co>

Files changed (1) hide show
  1. README.md +147 -147
README.md CHANGED
@@ -1,148 +1,148 @@
1
- ---
2
- annotations_creators:
3
- - expert-generated
4
- language_creators:
5
- - machine-generated
6
- languages:
7
- - hi
8
- - en
9
- licenses:
10
- - unknown
11
- multilinguality:
12
- - multilingual
13
- pretty_name: HashSet Manual
14
- size_categories:
15
- - unknown
16
- source_datasets:
17
- - original
18
- task_categories:
19
- - structure-prediction
20
- task_ids:
21
- - named-entity-recognition
22
- - structure-prediction-other-word-segmentation
23
- ---
24
-
25
- # Dataset Card for HashSet Manual
26
-
27
- ## Dataset Description
28
-
29
- - **Repository:** [prashantkodali/HashSet](https://github.com/prashantkodali/HashSet)
30
- - **Paper:** [HashSet -- A Dataset For Hashtag Segmentation](https://arxiv.org/abs/2201.06741)
31
-
32
- ### Dataset Summary
33
-
34
- Hashset is a new dataset consisting on 1.9k manually annotated and 3.3M loosely supervised tweets for testing the
35
- efficiency of hashtag segmentation models. We compare State of The Art Hashtag Segmentation models on Hashset and other
36
- baseline datasets (STAN and BOUN). We compare and analyse the results across the datasets to argue that HashSet can act
37
- as a good benchmark for hashtag segmentation tasks.
38
-
39
- HashSet Manual: contains 1.9k manually annotated hashtags. Each row consists of the hashtag, segmented hashtag ,named entity annotations, whether the hashtag contains mix of hindi and english tokens and/or contains non-english tokens.
40
-
41
- ### Languages
42
-
43
- Mostly Hindi and English.
44
-
45
- ## Dataset Structure
46
-
47
- ### Data Instances
48
-
49
- ```
50
- {
51
- "index": 10,
52
- "hashtag": "goodnewsmegan",
53
- "segmentation": "good news megan",
54
- "spans": {
55
- "start": [
56
- 8
57
- ],
58
- "end": [
59
- 13
60
- ],
61
- "text": [
62
- "megan"
63
- ]
64
- },
65
- "source": "roman",
66
- "gold_position": null,
67
- "mix": false,
68
- "other": false,
69
- "ner": true,
70
- "annotator_id": 1,
71
- "annotation_id": 2088,
72
- "created_at": "2021-12-30 17:10:33.800607",
73
- "updated_at": "2021-12-30 17:10:59.714840",
74
- "lead_time": 3896.182,
75
- "rank": {
76
- "position": [
77
- 1,
78
- 2,
79
- 3,
80
- 4,
81
- 5,
82
- 6,
83
- 7,
84
- 8,
85
- 9,
86
- 10
87
- ],
88
- "candidate": [
89
- "goodnewsmegan",
90
- "goodnewsmeg an",
91
- "goodnews megan",
92
- "goodnewsmega n",
93
- "go odnewsmegan",
94
- "good news megan",
95
- "good newsmegan",
96
- "g oodnewsmegan",
97
- "goodnewsme gan",
98
- "goodnewsm egan"
99
- ]
100
- }
101
- }
102
- ```
103
-
104
- ### Data Fields
105
-
106
- - `index`: a numerical index annotated by Kodali et al..
107
- - `hashtag`: the original hashtag.
108
- - `segmentation`: the gold segmentation for the hashtag.
109
- - `spans`: named entity spans.
110
- - `source`: data source.
111
- - `gold_position`: position of the gold segmentation on the `segmentation` field inside the `rank`.
112
- - `mix`: The hashtag has a mix of English and Hindi tokens.
113
- - `other`: The hashtag has non-English tokens.
114
- - `ner`: The hashtag has named entities.
115
- - `annotator_id`: annotator ID.
116
- - `annotation_id`: annotation ID.
117
- - `created_at`: Creation date timestamp.
118
- - `updated_at`: Update date timestamp.
119
- - `lead_time`: Lead time field annotated by Kodali et al..
120
- - `rank`: Rank of each candidate selected by a baseline word segmenter ( WordBreaker ).
121
- - `candidates`: Candidates selected by a baseline word segmenter ( WordBreaker ).
122
-
123
- ## Dataset Creation
124
-
125
- - All hashtag segmentation and identifier splitting datasets on this profile have the same basic fields: `hashtag` and `segmentation` or `identifier` and `segmentation`.
126
-
127
- - The only difference between `hashtag` and `segmentation` or between `identifier` and `segmentation` are the whitespace characters. Spell checking, expanding abbreviations or correcting characters to uppercase go into other fields.
128
-
129
- - There is always whitespace between an alphanumeric character and a sequence of any special characters ( such as `_` , `:`, `~` ).
130
-
131
- - If there are any annotations for named entity recognition and other token classification tasks, they are given in a `spans` field.
132
-
133
- ## Additional Information
134
-
135
- ### Citation Information
136
-
137
- ```
138
- @article{kodali2022hashset,
139
- title={HashSet--A Dataset For Hashtag Segmentation},
140
- author={Kodali, Prashant and Bhatnagar, Akshala and Ahuja, Naman and Shrivastava, Manish and Kumaraguru, Ponnurangam},
141
- journal={arXiv preprint arXiv:2201.06741},
142
- year={2022}
143
- }
144
- ```
145
-
146
- ### Contributions
147
-
148
  This dataset was added by [@ruanchaves](https://github.com/ruanchaves) while developing the [hashformers](https://github.com/ruanchaves/hashformers) library.
 
1
+ ---
2
+ annotations_creators:
3
+ - expert-generated
4
+ language_creators:
5
+ - machine-generated
6
+ language:
7
+ - hi
8
+ - en
9
+ license:
10
+ - unknown
11
+ multilinguality:
12
+ - multilingual
13
+ pretty_name: HashSet Manual
14
+ size_categories:
15
+ - unknown
16
+ source_datasets:
17
+ - original
18
+ task_categories:
19
+ - structure-prediction
20
+ task_ids:
21
+ - named-entity-recognition
22
+ - structure-prediction-other-word-segmentation
23
+ ---
24
+
25
+ # Dataset Card for HashSet Manual
26
+
27
+ ## Dataset Description
28
+
29
+ - **Repository:** [prashantkodali/HashSet](https://github.com/prashantkodali/HashSet)
30
+ - **Paper:** [HashSet -- A Dataset For Hashtag Segmentation](https://arxiv.org/abs/2201.06741)
31
+
32
+ ### Dataset Summary
33
+
34
+ Hashset is a new dataset consisting on 1.9k manually annotated and 3.3M loosely supervised tweets for testing the
35
+ efficiency of hashtag segmentation models. We compare State of The Art Hashtag Segmentation models on Hashset and other
36
+ baseline datasets (STAN and BOUN). We compare and analyse the results across the datasets to argue that HashSet can act
37
+ as a good benchmark for hashtag segmentation tasks.
38
+
39
+ HashSet Manual: contains 1.9k manually annotated hashtags. Each row consists of the hashtag, segmented hashtag ,named entity annotations, whether the hashtag contains mix of hindi and english tokens and/or contains non-english tokens.
40
+
41
+ ### Languages
42
+
43
+ Mostly Hindi and English.
44
+
45
+ ## Dataset Structure
46
+
47
+ ### Data Instances
48
+
49
+ ```
50
+ {
51
+ "index": 10,
52
+ "hashtag": "goodnewsmegan",
53
+ "segmentation": "good news megan",
54
+ "spans": {
55
+ "start": [
56
+ 8
57
+ ],
58
+ "end": [
59
+ 13
60
+ ],
61
+ "text": [
62
+ "megan"
63
+ ]
64
+ },
65
+ "source": "roman",
66
+ "gold_position": null,
67
+ "mix": false,
68
+ "other": false,
69
+ "ner": true,
70
+ "annotator_id": 1,
71
+ "annotation_id": 2088,
72
+ "created_at": "2021-12-30 17:10:33.800607",
73
+ "updated_at": "2021-12-30 17:10:59.714840",
74
+ "lead_time": 3896.182,
75
+ "rank": {
76
+ "position": [
77
+ 1,
78
+ 2,
79
+ 3,
80
+ 4,
81
+ 5,
82
+ 6,
83
+ 7,
84
+ 8,
85
+ 9,
86
+ 10
87
+ ],
88
+ "candidate": [
89
+ "goodnewsmegan",
90
+ "goodnewsmeg an",
91
+ "goodnews megan",
92
+ "goodnewsmega n",
93
+ "go odnewsmegan",
94
+ "good news megan",
95
+ "good newsmegan",
96
+ "g oodnewsmegan",
97
+ "goodnewsme gan",
98
+ "goodnewsm egan"
99
+ ]
100
+ }
101
+ }
102
+ ```
103
+
104
+ ### Data Fields
105
+
106
+ - `index`: a numerical index annotated by Kodali et al..
107
+ - `hashtag`: the original hashtag.
108
+ - `segmentation`: the gold segmentation for the hashtag.
109
+ - `spans`: named entity spans.
110
+ - `source`: data source.
111
+ - `gold_position`: position of the gold segmentation on the `segmentation` field inside the `rank`.
112
+ - `mix`: The hashtag has a mix of English and Hindi tokens.
113
+ - `other`: The hashtag has non-English tokens.
114
+ - `ner`: The hashtag has named entities.
115
+ - `annotator_id`: annotator ID.
116
+ - `annotation_id`: annotation ID.
117
+ - `created_at`: Creation date timestamp.
118
+ - `updated_at`: Update date timestamp.
119
+ - `lead_time`: Lead time field annotated by Kodali et al..
120
+ - `rank`: Rank of each candidate selected by a baseline word segmenter ( WordBreaker ).
121
+ - `candidates`: Candidates selected by a baseline word segmenter ( WordBreaker ).
122
+
123
+ ## Dataset Creation
124
+
125
+ - All hashtag segmentation and identifier splitting datasets on this profile have the same basic fields: `hashtag` and `segmentation` or `identifier` and `segmentation`.
126
+
127
+ - The only difference between `hashtag` and `segmentation` or between `identifier` and `segmentation` are the whitespace characters. Spell checking, expanding abbreviations or correcting characters to uppercase go into other fields.
128
+
129
+ - There is always whitespace between an alphanumeric character and a sequence of any special characters ( such as `_` , `:`, `~` ).
130
+
131
+ - If there are any annotations for named entity recognition and other token classification tasks, they are given in a `spans` field.
132
+
133
+ ## Additional Information
134
+
135
+ ### Citation Information
136
+
137
+ ```
138
+ @article{kodali2022hashset,
139
+ title={HashSet--A Dataset For Hashtag Segmentation},
140
+ author={Kodali, Prashant and Bhatnagar, Akshala and Ahuja, Naman and Shrivastava, Manish and Kumaraguru, Ponnurangam},
141
+ journal={arXiv preprint arXiv:2201.06741},
142
+ year={2022}
143
+ }
144
+ ```
145
+
146
+ ### Contributions
147
+
148
  This dataset was added by [@ruanchaves](https://github.com/ruanchaves) while developing the [hashformers](https://github.com/ruanchaves/hashformers) library.