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1.39k
negative
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6
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neutral
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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
I’m 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, let’s go to Kenny Williams for today’s 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, let’s take a break.And since that night,
0.0076
0.0714
0.9209
positive
36
I’ve been waiting for him to call, but I still haven’t heard from him.
0.7961
0.1927
0.0112
negative
37
You don’t think He’s 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 life’s 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 didn’t 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 o’clock news) It’s only seven o’clock. 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 – 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) I’ll keep that in mind, but don’t 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) Here’s your card, sir. You’re 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
End of preview. Expand in Data Studio

🐦 Tweets-Sentiment-Analysis (bdstar/Tweets-Sentiment-Analysis)

🧠 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.


πŸ—‚οΈ 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


🧩 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

πŸ“Š 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

πŸ’‘ 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])

🏷️ 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}
}

πŸ“¬ Contact

For questions, improvements, or collaboration:
Author: Md Abdullah Al Mamun
πŸ“§ Email: [email protected]
🌐 Website: TechNTuts πŸ’Ό Linkedin: WebRock

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