ID
int64 1
788k
| text
stringlengths 5
1.39k
| negative
stringlengths 6
6
| neutral
stringlengths 6
6
| positive
stringlengths 6
6
| label
stringclasses 3
values |
|---|---|---|---|---|---|
1
|
How are you, Mr. Ding?
|
0.0113
|
0.7568
|
0.2319
|
neutral
|
2
|
Covid cases are increasing fast!
|
0.7236
|
0.2287
|
0.0477
|
negative
|
3
|
I don't like it ever!
|
0.9075
|
0.0819
|
0.0106
|
negative
|
4
|
Yes That's great. I'm now happy.
|
0.0049
|
0.0109
|
0.9842
|
positive
|
5
|
What is this?
|
0.2209
|
0.7069
|
0.0723
|
neutral
|
6
|
Iβm John Brown..
|
0.0470
|
0.8180
|
0.1350
|
neutral
|
7
|
I have a house in the suburbs....
|
0.0333
|
0.8867
|
0.0800
|
neutral
|
8
|
and for us to get tans in our new bikinis....
|
0.0330
|
0.8392
|
0.1277
|
neutral
|
9
|
and maybe that's what we both need....
|
0.0210
|
0.3568
|
0.6222
|
positive
|
10
|
And now, letβs go to Kenny Williams for todayβs weather forecast....
|
0.0109
|
0.8078
|
0.1814
|
neutral
|
11
|
and taste a few! There will be wines from several countries and an expert to give advice on which wines are good and which ones are not....
|
0.0185
|
0.6130
|
0.3685
|
neutral
|
12
|
and you looked so adorable with your hair all wet.
|
0.0054
|
0.0212
|
0.9734
|
positive
|
13
|
I had to take a picture of you standing there in that little alley, smiling and laughing in the rain......
|
0.0193
|
0.2980
|
0.6827
|
positive
|
14
|
Can you start next week?...
|
0.0101
|
0.9318
|
0.0581
|
neutral
|
15
|
Here you go...
|
0.2141
|
0.6968
|
0.0891
|
neutral
|
16
|
I am seeing someone.
|
0.0406
|
0.8163
|
0.1431
|
neutral
|
17
|
This is Yi-jun, my......
|
0.0342
|
0.8083
|
0.1575
|
neutral
|
18
|
I knew it. I always knew you were a lesbian!...
|
0.0347
|
0.5057
|
0.4596
|
neutral
|
19
|
I know I'll be killed if I pee on the toilet seat....
|
0.9208
|
0.0726
|
0.0065
|
negative
|
20
|
Now, that's all I want to say about world coal reserves.
|
0.1868
|
0.6935
|
0.1198
|
neutral
|
21
|
So let's move on to the next topic, renewable resources.
|
0.0130
|
0.5315
|
0.4555
|
neutral
|
22
|
There are three things we have to consider when talking about renewable resources.
|
0.0174
|
0.7964
|
0.1863
|
neutral
|
23
|
First, sustainability; second, marketability; lastly, the reality factor.
|
0.0769
|
0.7814
|
0.1417
|
neutral
|
24
|
Let's talk about each point in more detail... John, would you like to take it from here?...
|
0.0079
|
0.8707
|
0.1215
|
neutral
|
25
|
Now that we have been over the gory details of our disastrous first quarter, Ed! Give us some good news.
|
0.3129
|
0.2895
|
0.3976
|
positive
|
26
|
How are things looking for us in terms sales this month?... OK.
|
0.0070
|
0.6481
|
0.3449
|
neutral
|
27
|
And here's your money.... Okay, I'm done. Here's the form and my old card....
|
0.1952
|
0.7297
|
0.0751
|
neutral
|
28
|
Okay, I'm finished.
|
0.2136
|
0.6115
|
0.1749
|
neutral
|
29
|
Here's your form and my old card.... Okay,
|
0.0135
|
0.8694
|
0.1171
|
neutral
|
30
|
I'm through. Here's the form and my old card.... Okay, that's it.
|
0.0591
|
0.8077
|
0.1332
|
neutral
|
31
|
Here's the form, and here's my old card to use as a model.... Quick!
|
0.0097
|
0.6433
|
0.3470
|
neutral
|
32
|
Pass me your binoculars.
|
0.0947
|
0.7321
|
0.1732
|
neutral
|
33
|
Look at that bird... I've never seen one of those before.
|
0.1271
|
0.2958
|
0.5772
|
positive
|
34
|
It's indigenous to Guiling, and an endangered species too.
|
0.8280
|
0.1653
|
0.0067
|
negative
|
35
|
This is lucky.... so, I said, letβs take a break.And since that night,
|
0.0076
|
0.0714
|
0.9209
|
positive
|
36
|
Iβve been waiting for him to call, but I still havenβt heard from him.
|
0.7961
|
0.1927
|
0.0112
|
negative
|
37
|
You donβt think Heβs seeing someone else, do you?...
|
0.2106
|
0.7604
|
0.0289
|
neutral
|
38
|
So what I think we need to do is (XXXXXXXXXX) finish on time.... The rings please.
|
0.0384
|
0.5716
|
0.3900
|
neutral
|
39
|
May this ring be blessed so he who gives it and she who wears it may abide in peace,
|
0.0046
|
0.0449
|
0.9505
|
positive
|
40
|
and continue in love until lifeβs end....
|
0.0126
|
0.3382
|
0.6492
|
positive
|
41
|
What a stink.
|
0.8988
|
0.0856
|
0.0157
|
negative
|
42
|
This place stinks like rotten eggs....
|
0.9460
|
0.0473
|
0.0067
|
negative
|
43
|
Who you were with?
|
0.0174
|
0.9248
|
0.0578
|
neutral
|
44
|
I didnβt know whom you were with.... yes, but this one has an all-new buzz.
|
0.0774
|
0.6789
|
0.2437
|
neutral
|
45
|
'All-you-can-eat' dinner special.
|
0.0805
|
0.7906
|
0.1289
|
neutral
|
46
|
'Beautiful Mind' will be playing again. And there's also 'Titanic'.
|
0.0018
|
0.1380
|
0.8602
|
positive
|
47
|
'going Dutch' means to split the bill, silly!
|
0.5276
|
0.4396
|
0.0329
|
negative
|
48
|
'Please don't enter the bamboo groves.' We're not allowed to go in.
|
0.7760
|
0.2137
|
0.0103
|
negative
|
49
|
'Romeo and Juliet'.
|
0.0109
|
0.9117
|
0.0774
|
neutral
|
50
|
'Round' and 'frame' are two different terms.
|
0.2160
|
0.7593
|
0.0247
|
neutral
|
51
|
The Drunken Beauty? It's funny that we have'Sleeping Beauty'in my country. Anyway, what's it about? Is the beauty a drunkard?
|
0.5181
|
0.3966
|
0.0854
|
negative
|
52
|
The sound of music. This music is known by everybody and is suitable for all ages. It is about a happy family without sex, violence or bad language.
|
0.0083
|
0.1545
|
0.8373
|
positive
|
53
|
The final costing, including advert design and production, comes to forty-five thousand six hundred RIB. We want payment ten working days before publication or we will cancel the ad. Thanks for... "
|
0.2044
|
0.7467
|
0.0490
|
neutral
|
54
|
Tie a Yellow Ribbon on the Old Oak Tree "?! Where did you learn that song?
|
0.3597
|
0.6028
|
0.0375
|
neutral
|
55
|
You ain't nothing but a hound-dog...
|
0.6831
|
0.2880
|
0.0289
|
negative
|
56
|
(10 minutes later.) Hi! Here are completed forms.
|
0.0030
|
0.5227
|
0.4743
|
neutral
|
57
|
(15 minutes later) Mr. Wang, we are deeply sorry for the inconvenience. The maintenance might last for a long time, may I offer you another room?
|
0.5533
|
0.4234
|
0.0233
|
negative
|
58
|
(2 minutes later) Mr. Lin, Mr. Charles can see you now. This way, please.
|
0.0081
|
0.7036
|
0.2883
|
neutral
|
59
|
(5 minutes later) OK, it's all over. Spit there and bite the cotton ball tightly in place for half an hour.
|
0.1738
|
0.5648
|
0.2614
|
neutral
|
60
|
(5 minutes later) What sort of hairstyles do you like?
|
0.0086
|
0.8850
|
0.1063
|
neutral
|
61
|
(A few minutes later.) Should I get off at the next stop?
|
0.0093
|
0.9554
|
0.0353
|
neutral
|
62
|
(A moment later) It's cute.The color suits my complexion.
|
0.0046
|
0.0452
|
0.9502
|
positive
|
63
|
(A stranger stops to help) Everything OK?
|
0.0175
|
0.7475
|
0.2349
|
neutral
|
64
|
(after a while...) I'm his guide. What's the trouble with him, doctor
|
0.1105
|
0.7381
|
0.1515
|
neutral
|
65
|
(after a while...) Walter! Where are you?
|
0.0266
|
0.8660
|
0.1073
|
neutral
|
66
|
(after a while...) Where's the patient?
|
0.1712
|
0.8134
|
0.0153
|
neutral
|
67
|
(after a while) Good afternoon, Mrs. Smith. I called you just now.
|
0.0037
|
0.2709
|
0.7254
|
positive
|
68
|
(After arriving on time) Here's twenty dollars.
|
0.0063
|
0.5627
|
0.4310
|
neutral
|
69
|
(After testing) Your typing and stenography are pretty good. Would you be interested in applying for the job?
|
0.0036
|
0.0614
|
0.9350
|
positive
|
70
|
(After the breakfast) Which floor is the art exhibition we are going to?
|
0.0051
|
0.9408
|
0.0541
|
neutral
|
71
|
(After the show) It's an excellent musical. The acting was very expressive and the songs and dancing were superb.
|
0.0026
|
0.0088
|
0.9885
|
positive
|
72
|
(After they enter the park) Oh, it's so quiet here.We have the park to ourselves, only you and me!
|
0.0054
|
0.1031
|
0.8916
|
positive
|
73
|
(After they entering the park) Great, it's so quiet here. We have the park to ourselves, only you and me.
|
0.0038
|
0.0421
|
0.9541
|
positive
|
74
|
(After trying) I'm afraid it's still too fight around the stomach.
|
0.8179
|
0.1729
|
0.0091
|
negative
|
75
|
(After trying) Mm, a perfect fit. How much?
|
0.0052
|
0.1060
|
0.8888
|
positive
|
76
|
(After trying) Mm, this pair fits me well. I'll take it. How much is it?
|
0.0050
|
0.0959
|
0.8991
|
positive
|
77
|
(After watching the movie.) Are you crying?
|
0.3454
|
0.6126
|
0.0420
|
neutral
|
78
|
(Afternoon) Miss Liu. Are you typing my report?
|
0.0107
|
0.9340
|
0.0553
|
neutral
|
79
|
(And here is the seven oβclock news) Itβs only seven oβclock. Your watch is fast.
|
0.0389
|
0.6812
|
0.2799
|
neutral
|
80
|
(At counter 1.) Do you take parcels here?
|
0.0099
|
0.9449
|
0.0452
|
neutral
|
81
|
(At the beach) My bag is so heavy. Let's put the stuff under the tree.
|
0.2377
|
0.6250
|
0.1372
|
neutral
|
82
|
(at the dance) That band is playing good music. Shall we dance?
|
0.0034
|
0.0474
|
0.9492
|
positive
|
83
|
(At the MET station) Hurry up! We are running late for school.
|
0.3018
|
0.6226
|
0.0756
|
neutral
|
84
|
(At the Party) It's Christmas Eve! Time to open presents!
|
0.0026
|
0.0936
|
0.9038
|
positive
|
85
|
(At the zoo) Wow! This zoo is really huge.
|
0.0034
|
0.0149
|
0.9817
|
positive
|
86
|
(beep) This is Miriam Lavalle β that's spelt L, A, V, A, L, L, E. It's about an appointment I made with Simon Meredith. I'm afraid I'm going to have to change it. Can you call me? The number is 01563 566 770. Thank you.
|
0.4687
|
0.5086
|
0.0227
|
neutral
|
87
|
(Before Christmas Party) Are you ready for the Christmas party tonight
|
0.0037
|
0.6595
|
0.3369
|
neutral
|
88
|
(Benjamin starts to run and then he seems to remember something and returns.) Ugh, excuse me, where is the Lost and Found?
|
0.4063
|
0.5197
|
0.0739
|
neutral
|
89
|
(Bob groans.) What's the matter.Bob?
|
0.4337
|
0.5521
|
0.0142
|
neutral
|
90
|
(Get here) Here we are, sir.
|
0.0112
|
0.6625
|
0.3263
|
neutral
|
91
|
(ha ha) Iβll keep that in mind, but donβt tell my husband.
|
0.0622
|
0.5909
|
0.3469
|
neutral
|
92
|
(Half an hour, Janice begins shouting excitedly.) What's the matter with you?
|
0.0681
|
0.6289
|
0.3029
|
neutral
|
93
|
(Handing her a menu) Your waiter will be here in a minute to take your order.
|
0.0076
|
0.8799
|
0.1124
|
neutral
|
94
|
(Having lunch with Joseph) Have you ever been invited to a Chinese feast?
|
0.0047
|
0.8728
|
0.1225
|
neutral
|
95
|
(In the club) Look at those people in the dance floor, they are so crazy.
|
0.5415
|
0.3683
|
0.0901
|
negative
|
96
|
(Later..) Everything looks tempting. What do you want to have?
|
0.0090
|
0.3282
|
0.6628
|
positive
|
97
|
(Later) Everything looks tempting. What do you want to have?
|
0.0100
|
0.3705
|
0.6196
|
positive
|
98
|
(later) Hereβs your card, sir. Youβre all checked in. let me just tell you about a few of our services. We have free breakfast in the lounge from 7:00- 9:00. You call the receptionist to arrange
|
0.0030
|
0.5446
|
0.4523
|
neutral
|
99
|
(Laugh) All right. You caught me in the act. I finally worked up the nerve to ask Diana out. I was just writing a note to put on her desk.
|
0.0471
|
0.5931
|
0.3598
|
neutral
|
100
|
(looking at a newspaper) Oh, dear me! There's no performance at the National theater this weekend. So we have to go to cinema instead.
|
0.8241
|
0.1592
|
0.0167
|
negative
|
π¦ Tweets-Sentiment-Analysis (bdstar/Tweets-Sentiment-Analysis)
π§ Overview
A refined and merged version of Tweets text sentiment datasets, providing a clean and well-balanced dataset for sentiment classification across three sentiment categories:positive, negative, and neutral.
This dataset is split into three parts β train, test, and validation β each sourced from highly reputable open datasets.
It is designed for training, evaluating, and benchmarking NLP models for Tweets Sentiment Analysis and other social media text classification tasks.
ποΈ Dataset Splits
| # | Split | Name | Negative | Neutral | Positive | % Negative | % Neutral | % Positive | Total |
|---|---|---|---|---|---|---|---|---|---|
| 1 | Train | Sentiment140 (positive-sentence) | 71,462 | 233,345 | 483,261 | 9.067999 | 29.609754 | 61.322246 | 788,068 |
| 2 | Train | Sentiment140 (negative-sentence) | 451,341 | 191,650 | 136,801 | 57.879665 | 24.577067 | 17.543268 | 779,792 |
| 3 | Train | DailyDialog | 12,623 | 45,674 | 20,226 | 16.075545 | 58.166397 | 25.758058 | 78,523 |
| 4 | Test | ChatGPT Tweets Sentiment Analysis | 194,425 | 360,060 | 295,108 | 22.884487 | 42.380293 | 34.735220 | 849,593 |
| 5 | Validation | mteb-tweet_sentiment_extraction | 10,083 | 7,969 | 12,070 | 33.473873 | 26.455747 | 40.070380 | 30,122 |
| Total | β | 739,934 | 838,698 | 947,466 | 29.291579 | 33.201325 | 37.507096 | 2,526,098 |
The possiblity value of Negative, Positive and Neutral for a text has been calculated by the model cardiffnlp/twitter-roberta-base-sentiment-latest
π§© Column Descriptions
| Column | Type | Description |
|---|---|---|
| ID | Integer | Auto-incremental unique ID for each row |
| text | String | Tweet text content |
| negative | Float | Possiblity the text be a negative |
| neutral | Float | Possiblity the text be a neutral |
| positive | Float | Possiblity the text be a positive |
| label | String | Sentiment category β one of positive, negative, or neutral |
π Dataset Summary
| Property | Value |
|---|---|
| Total Rows | 2,526,098 |
| Columns | 6 |
| File Formats | JSON / Parquet / Pandas / Polars / Croissant |
| License | MIT |
| Author | Md Abdullah Al Mamun |
| Year | 2025 |
| Source | Refined version of Tweets Sentiment Dataset |
π‘ Usage Example (Python)
from datasets import load_dataset
# Load dataset from Hugging Face
ds = load_dataset("bdstar/Tweets-Sentiment-Analysis")
# Access splits
train = dataset["train"]
test = dataset["test"]
validation = dataset["validation"]
# Display sample
print(train[0])
π·οΈ Citation
If you use this dataset in your research or application, please cite as:
@dataset{bdstar2025Tweets,
title = {Tweets-Sentiment-Analysis},
author = {Md Abdullah Al Mamun},
year = {2025},
howpublished = {Hugging Face},
url = {https://huggingface.co/datasets/bdstar/Tweets-Sentiment-Analysis}
}
π¬ Contact
For questions, improvements, or collaboration:
Author: Md Abdullah Al Mamun
π§ Email: [email protected]
π Website: TechNTuts
πΌ Linkedin: WebRock
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