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name
stringlengths
2
11
gender
stringclasses
2 values
count
int64
20k
4.23M
probability
float64
0
0.01
split
stringclasses
3 values
Bryant
M
51,544
0.000141
train
Phillip
M
322,731
0.000883
train
Sergio
M
78,845
0.000216
train
Louie
M
28,702
0.000079
train
Damon
M
66,920
0.000183
train
Herbert
M
231,146
0.000633
train
Leon
M
170,355
0.000466
train
Mario
M
151,205
0.000414
train
Dwayne
M
79,640
0.000218
train
Matt
M
24,350
0.000067
train
Drake
M
34,410
0.000094
train
Carlton
M
49,299
0.000135
train
Leonardo
M
68,374
0.000187
train
Alton
M
47,081
0.000129
train
Delbert
M
47,135
0.000129
train
Corey
M
197,691
0.000541
train
Demetrius
M
35,773
0.000098
train
Anthony
M
1,506,437
0.004123
train
Garland
M
23,857
0.000065
train
Landon
M
161,513
0.000442
train
Jeff
M
120,870
0.000331
train
Trent
M
53,648
0.000147
train
Mitchell
M
174,201
0.000477
train
Conor
M
24,919
0.000068
train
Titus
M
20,722
0.000057
train
Rowan
M
24,478
0.000067
train
Elijah
M
299,860
0.000821
train
Gilbert
M
131,738
0.000361
train
Jorge
M
135,370
0.00037
train
Ed
M
26,249
0.000072
train
Emil
M
32,162
0.000088
train
Reginald
M
115,163
0.000315
train
Vincent
M
352,791
0.000965
train
Alex
M
286,229
0.000783
train
Holden
M
23,747
0.000065
train
Eugene
M
382,946
0.001048
train
Kenneth
M
1,321,790
0.003617
train
Dallas
M
64,827
0.000177
train
Monte
M
22,548
0.000062
train
Isaac
M
292,709
0.000801
train
Antoine
M
28,118
0.000077
train
Dustin
M
232,187
0.000635
train
Darrel
M
30,639
0.000084
train
Jalen
M
36,700
0.0001
train
Benjamin
M
800,321
0.00219
train
William
M
4,226,608
0.011567
train
Kristian
M
20,498
0.000056
train
Jerald
M
26,304
0.000072
train
Nickolas
M
40,608
0.000111
train
Kayden
M
51,780
0.000142
train
Byron
M
83,912
0.00023
train
Jefferson
M
22,397
0.000061
train
Jeffrey
M
1,020,570
0.002793
train
Ken
M
33,280
0.000091
train
Jeffery
M
237,685
0.00065
train
Todd
M
292,608
0.000801
train
Ruben
M
114,969
0.000315
train
Nolan
M
104,499
0.000286
train
Brian
M
1,239,444
0.003392
train
Thaddeus
M
24,461
0.000067
train
Terrell
M
37,229
0.000102
train
Gordon
M
174,239
0.000477
train
Lincoln
M
66,621
0.000182
train
Doug
M
22,557
0.000062
train
Lamont
M
24,162
0.000066
train
Braden
M
46,700
0.000128
train
Kaleb
M
78,960
0.000216
train
Laurence
M
40,886
0.000112
train
Nathanael
M
20,855
0.000057
train
Kendrick
M
30,009
0.000082
train
Ricardo
M
144,483
0.000395
train
Lawrence
M
469,128
0.001284
train
Ross
M
89,424
0.000245
train
Jose
M
582,242
0.001593
train
Joel
M
282,890
0.000774
train
Hudson
M
64,252
0.000176
train
Adrian
M
249,881
0.000684
train
Giovanni
M
70,258
0.000192
train
Phil
M
20,048
0.000055
train
Rodrigo
M
24,214
0.000066
train
Stewart
M
33,692
0.000092
train
Alfonso
M
40,781
0.000112
train
Cedric
M
42,285
0.000116
train
Darwin
M
25,196
0.000069
train
Rodger
M
21,922
0.00006
train
Felix
M
72,913
0.0002
train
Marco
M
74,326
0.000203
train
Rylan
M
30,466
0.000083
train
Wayne
M
369,307
0.001011
train
Cayden
M
33,998
0.000093
train
Ismael
M
37,018
0.000101
train
Daryl
M
67,915
0.000186
train
Anton
M
24,013
0.000066
train
Bentley
M
45,131
0.000124
train
Ernesto
M
44,033
0.000121
train
Seth
M
170,132
0.000466
train
Jared
M
217,187
0.000594
train
Lamar
M
34,070
0.000093
train
Guillermo
M
30,858
0.000084
train
Harvey
M
123,737
0.000339
train

NAMEXACT

This dataset contains names that are exclusively associated with a single gender and that have no ambiguous meanings, therefore being exact with respect to both gender and meaning.

The data is split into train, validation, and test set. You can load the entire dataset using:

from datasets import load_dataset
load_dataset('aieng-lab/genter', split='all')

Dataset Details

Dataset Description

The goal of this dataset to consist only of words that are clearly names of unabiguous gender. For instance, the following names are excluded:

  • Skyler (ambiguous gender)
  • Christian (believer in Christianity)
  • Drew (simple past of the verb to draw)
  • Florence (an Italian city)
  • Henry (the SI unit of inductance)
  • Mercedes (a car brand)

Due to the exclusion of such names, this dataset can be used for tasks where only names (with high certainty) are required.

A larger name dataset is NAMEXTEND.

Dataset Sources [optional]

  • Repository: [More Information Needed]
  • Paper [optional]: [More Information Needed]
  • Original Dataset: Gender by Name

Dataset Structure

This dataset comes in a version containing all names (split), and three splits: train (85%), validation(5%), test (10%)

  • name: the name
  • gender: the gender of the name (M for male and F for female)
  • count: the count value of this name (raw value from the original dataset)
  • probability: the probability of this name (raw value from original dataset; not normalized to this dataset!)
  • split: the split of the name (constant for HuggingFace splits train/ validation/ test; but contains the respective HuggingFace splits for all)

Dataset Creation

Source Data

The data is created by filtering Gender by Name.

Data Collection and Processing

First, all names of the raw dataset with counts less than 20000 are filtered out, resulting in a selection of the most common 1697 names. Next, we removed names with ambiguous gender, such as Skyler, Sidney, and Billie, which were identified by having counts for both genders in the filtered dataset, removing 67 additional names.

To further refine our selection of the remaining 1,630 names, we manually checked each remaining name for ambiguous meanings, such as Christian (believer in Christianity), and Drew (simple past of the verb to draw). This exclusion process was performed without considering casing to ensure applicability to non-cased models. The filtering resulted in the exclusion of 232 names, leaving us with a total of 1398 names in this dataset NAMEXACT.

Bias, Risks, and Limitations

The original dataset provides counts of names (with their gender) for male and female babies from open-source government authorities in the US (1880-2019), UK (2011-2018), Canada (2011-2018), and Australia (1944-2019) in these periods.

Citation

BibTeX:

[More Information Needed]

Dataset Card Authors

jdrechsel

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