Datasets:
idx
int64 1
5.75k
| sentence1
stringlengths 16
367
| sentence2
stringlengths 15
311
| label
int64 0
1
|
|---|---|---|---|
1
|
A plane is taking off.
|
An air plane is taking off.
| 1
|
2
|
A man is playing a large flute.
|
A man is playing a flute.
| 0
|
3
|
A man is spreading shreded cheese on a pizza.
|
A man is spreading shredded cheese on an uncooked pizza.
| 1
|
4
|
Three men are playing chess.
|
Two men are playing chess.
| 1
|
5
|
A man is playing the cello.
|
A man seated is playing the cello.
| 0
|
6
|
Some men are fighting.
|
Two men are fighting.
| 0
|
7
|
A man is smoking.
|
A man is skating.
| 0
|
8
|
The man is playing the piano.
|
The man is playing the guitar.
| 1
|
9
|
A man is playing on a guitar and singing.
|
A woman is playing an acoustic guitar and singing.
| 0
|
10
|
A person is throwing a cat on to the ceiling.
|
A person throws a cat on the ceiling.
| 1
|
11
|
The man hit the other man with a stick.
|
The man spanked the other man with a stick.
| 1
|
12
|
A woman picks up and holds a baby kangaroo.
|
A woman picks up and holds a baby kangaroo in her arms.
| 1
|
13
|
A man is playing a flute.
|
A man is playing a bamboo flute.
| 1
|
14
|
A person is folding a piece of paper.
|
Someone is folding a piece of paper.
| 1
|
15
|
A man is running on the road.
|
A panda dog is running on the road.
| 0
|
16
|
A dog is trying to get bacon off his back.
|
A dog is trying to eat the bacon on its back.
| 1
|
17
|
The polar bear is sliding on the snow.
|
A polar bear is sliding across the snow.
| 1
|
18
|
A woman is writing.
|
A woman is swimming.
| 0
|
19
|
A cat is rubbing against baby's face.
|
A cat is rubbing against a baby.
| 1
|
20
|
The man is riding a horse.
|
A man is riding on a horse.
| 1
|
21
|
A man pours oil into a pot.
|
A man pours wine in a pot.
| 1
|
22
|
A man is playing a guitar.
|
A girl is playing a guitar.
| 0
|
23
|
A panda is sliding down a slide.
|
A panda slides down a slide.
| 1
|
24
|
A woman is eating something.
|
A woman is eating meat.
| 1
|
25
|
A woman peels a potato.
|
A woman is peeling a potato.
| 1
|
26
|
The boy fell off his bike.
|
A boy falls off his bike.
| 1
|
27
|
The woman is playing the flute.
|
A woman is playing a flute.
| 1
|
28
|
A rabbit is running from an eagle.
|
A hare is running from a eagle.
| 1
|
29
|
The woman is frying a breaded pork chop.
|
A woman is cooking a breaded pork chop.
| 1
|
30
|
A girl is flying a kite.
|
A girl running is flying a kite.
| 0
|
31
|
A man is riding a mechanical bull.
|
A man rode a mechanical bull.
| 0
|
32
|
The man is playing the guitar.
|
A man is playing a guitar.
| 1
|
33
|
A woman is dancing and singing with other women.
|
A woman is dancing and singing in the rain.
| 0
|
34
|
A man is slicing a bun.
|
A man is slicing an onion.
| 0
|
35
|
A man is pouring oil into a pan.
|
A man is pouring oil into a skillet.
| 1
|
36
|
A lion is playing with people.
|
A lion is playing with two men.
| 0
|
37
|
A dog rides a skateboard.
|
A dog is riding a skateboard.
| 1
|
38
|
Someone is carving a statue.
|
A man is carving a statue.
| 1
|
39
|
A woman is slicing an onion.
|
A man is cutting an onion.
| 0
|
40
|
A woman peels shrimp.
|
A woman is peeling shrimp.
| 1
|
41
|
A woman is frying fish.
|
A woman is cooking fish.
| 1
|
42
|
A woman is playing an electric guitar.
|
A woman is playing a guitar.
| 1
|
43
|
A baby tiger is playing with a ball.
|
A baby is playing with a doll.
| 0
|
44
|
A person is slicing a tomato.
|
A person is slicing some meat.
| 1
|
45
|
A person cuts an onion.
|
A person is cutting an onion.
| 1
|
46
|
A man is playing the piano.
|
A woman is playing the violin.
| 0
|
47
|
A woman is playing the flute.
|
A man is playing the guitar.
| 0
|
48
|
A man is cutting up a potato.
|
A man is cutting up carrots.
| 1
|
49
|
A kid is playing guitar.
|
A boy is playing a guitar.
| 1
|
50
|
A boy is playing guitar.
|
A man is playing a guitar.
| 1
|
51
|
A man is playing guitar.
|
A boy is playing a guitar.
| 1
|
52
|
A little boy is playing a keyboard.
|
A boy is playing key board.
| 1
|
53
|
A man is playing a guitar.
|
A man is playing an electric guitar.
| 1
|
54
|
A dog licks a baby.
|
A dog is licking a baby.
| 1
|
55
|
A woman is slicing an onion.
|
A man is cutting and onion.
| 0
|
56
|
A man is playing the guitar.
|
A man is playing the drums.
| 1
|
57
|
A woman is slicing a pepper.
|
A woman is cutting a red pepper.
| 1
|
58
|
A man is playing the drums.
|
A man plays the drum.
| 0
|
59
|
A woman rides a horse.
|
A woman is riding a horse.
| 1
|
60
|
A man is eating a banana by a tree.
|
A man is eating a banana.
| 0
|
61
|
A cat is playing a key board.
|
A man is playing two keyboards.
| 0
|
62
|
A man chops down a tree with an axe.
|
A man cut a tree with an axe.
| 1
|
63
|
A kid plays with a toy phone.
|
A little boy plays with a toy phone.
| 1
|
64
|
A man is riding a motorcycle.
|
A man is riding a horse.
| 1
|
65
|
A man is riding a motorcycle.
|
A man is riding a horse.
| 1
|
66
|
A squirrel is spinning around in circles.
|
A squirrel runs around in circles.
| 1
|
67
|
A man and a woman are kissing.
|
A man and woman kiss.
| 1
|
68
|
A man is getting into a car.
|
A man is getting into a car in a garage.
| 1
|
69
|
A man is dancing.
|
A man is talking.
| 0
|
70
|
A man is playing the guitar and singing.
|
A man is playing the guitar.
| 0
|
71
|
A person is cutting mushrooms.
|
A person is cutting mushrooms with a knife.
| 1
|
72
|
A tiger cub is making a sound.
|
A tiger is walking around.
| 0
|
73
|
A person is slicing onions.
|
A person is peeling an onion.
| 1
|
74
|
A man is playing the piano.
|
A man is playing the trumpet.
| 1
|
75
|
A woman is peeling a potato.
|
A woman is peeling an apple.
| 1
|
76
|
A pankda is eating bamboo.
|
A panda bear is eating some bamboo.
| 1
|
77
|
A person is peeling an onion.
|
A person is peeling an eggplant.
| 1
|
78
|
A monkey pushes another monkey.
|
The monkey pushed the other monkey.
| 1
|
79
|
A squirrel runs around in circles.
|
A squirrel is moving in circles.
| 1
|
80
|
A man is tying his shoe.
|
A man ties his shoe.
| 1
|
81
|
A boy is singing and playing the piano.
|
A boy is playing the piano.
| 1
|
82
|
A dog is eating water melon.
|
A dog is eating a piece of watermelon.
| 1
|
83
|
A woman is chopping broccoli.
|
A woman is chopping broccoli with a knife.
| 1
|
84
|
A man is peeling a potato.
|
A man peeled a potatoe.
| 0
|
85
|
A woman is playing a guitar.
|
A man plays a guitar.
| 0
|
86
|
A woman is slicing tomato.
|
A man is slicing onion.
| 0
|
87
|
A man swims underwater.
|
A woman is swimming underwater.
| 1
|
88
|
A man and woman are talking.
|
A man and woman is eating.
| 0
|
89
|
A small dog is chasing a yoga ball.
|
A dog is chasing a ball.
| 0
|
90
|
The men are playing cricket.
|
The men are playing basketball.
| 1
|
91
|
A man rides off on a motorcycle.
|
A man is riding on a motorcycle.
| 0
|
92
|
A man is playing a guitar.
|
A man is singing and playing a guitar.
| 1
|
93
|
The man talked on the telephone.
|
The man is talking on the phone.
| 1
|
94
|
A man is fishing.
|
A man is exercising.
| 1
|
95
|
A man is levitating.
|
A man is talking.
| 0
|
96
|
Two boys are driving.
|
Two bays are dancing.
| 0
|
97
|
A man is riding on a horse.
|
A girl is riding a horse.
| 0
|
98
|
A man is riding a bicycle.
|
A monkey is riding a bike.
| 1
|
99
|
A man is slicing potatoes.
|
A woman is peeling potato.
| 1
|
100
|
A woman is peeling a potato.
|
A man is slicing potato.
| 0
|
End of preview. Expand
in Data Studio
Paraphrase Detection Dataset (Derived from SetFit/stsb)
Description:
This dataset originates from the SetFit/stsb dataset, which was initially created for semantic textual similarity (STS) tasks with a label range of 0 to 5. It has been adapted for binary paraphrase detection by leveraging the high-accuracy paraphrase classification model viswadarshan06/pd-robert.
Each sentence pair in the original dataset has been re-labeled according to the following binary scheme:
- 1 → Paraphrase: The two sentences convey the same meaning.
- 0 → Not Paraphrase: The two sentences have different meanings.
This binary labeling makes the dataset directly applicable for paraphrase detection tasks within Natural Language Processing (NLP). It is particularly useful for:
- Training paraphrase detection models.
- Evaluating the performance of paraphrase detection models.
- Facilitating transfer learning for binary classification tasks related to sentence similarity.
Dataset Features:
The dataset contains the following features for each instance:
- sentence1: The first sentence in English.
- sentence2: The second sentence in English.
- label: A binary label indicating whether the two sentences are paraphrases:
1: The sentences are paraphrases.0: The sentences are not paraphrases.
Use Cases:
This dataset is suitable for a variety of NLP applications, including:
- Paraphrase detection model training: Training new models to accurately identify paraphrases.
- Sentence similarity tasks: Evaluating how well models can determine if two sentences have similar meanings.
- Fine-tuning binary classification models: Adapting pre-trained binary classification models for the specific task of paraphrase detection.
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