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Ep #
stringclasses
43 values
Misery
stringlengths
15
171
Score
int64
11
100
VNTO
stringclasses
5 values
Reward
int64
0
15k
Win
stringclasses
3 values
Comments
stringclasses
22 values
question_tag
stringclasses
13 values
level
stringclasses
30 values
1x01
You Send a Nude Selfie to HR by mistake
70
T
0
nan
nan
1_base
nan
1x01
You find Maggots in your Fried Rice
45
T
0
nan
nan
1_base
nan
1x01
You are Attacked by a bear after Reasoning with the bear
52
V
500
n
nan
1_1
higher
1x01
You Left your Mic On and Went Toilet
49
V
500
y
nan
1_2
nan
1x01
You go to a doctor. Doctor Borrows $300k from you and then diagnoses you with Dementia
76
N
0
nan
nan
2_1_base
nan
1x01
You are breastfed until you are 9
63
N
0
nan
nan
2_2_base
nan
1x01
You are Fired After Donating Kidney to help your Boss
69
N
1,000
n
nan
2_1
nan
1x01
You as a Teen are forced by your parents to Live in Woods for eating a pop-tart
69
N
1,000
y
nan
2_2
nan
1x01
You offend a room of feminist panelists
47
V
2,000
y
nan
3
51
1x01
You discover your wife cheating in your Uber
76
N
5,000
n
nan
4_1
lower
1x01
You are in an Escalator which Speeds Up
32
V
10,000
y
nan
4_2
nan
1x01
Your testicles get stuck in the shower stool
49
N
15,000
y
nan
4_3
nan
1x02
Your Parents Leave You in a Corn Maze
75
N
0
nan
nan
2_1_base
nan
1x02
You bite Your Tongue Off
73
T
0
nan
nan
1_base
nan
1x02
Your Wife Calls out Your Cheating on Billboard
71
N
1,000
y
(Snopes says did not happen)
2_2
nan
1x02
You Burn Your Penis Trying to Whiten It
69
N
1,000
n
nan
2_1
nan
1x02
Your Toes Replace Your Fingers
68
V
500
y
nan
1_1
nan
1x02
You Plummet 30 Stories (you survived it!)
67
V
500
n
(can't find exact video)
1_2
higher
1x02
Wife Buys Newspaper Ad About You and Baby Mama
62
N
0
nan
nan
2_2_base
nan
1x02
You Think You Won a Prize; Actually Getting Arrested
62
V
10,000
n
nan
4_2
lower
1x02
Your Daughter Marries a Roller Coaster
60
N
15,000
y
nan
4_3
nan
1x02
You are attacked by a Swarm of Bees
44
T
0
nan
nan
1_base
nan
1x02
You Publicly Ask for Toilet Paper while you are pooping in the toilet
38
V
2,000
y
nan
3
36
1x02
You Have a Giant Black Pimple
37
N
5,000
y
nan
4_1
nan
1x03
You Lose an Arm in Grinder
96
N
1,000
y
nan
2_1
nan
1x03
You Contract Super-Gonorrhea
81
N
0
nan
nan
2_2_base
nan
1x03
You're an Anti-gay Pastor Caught on Grindr
74
N
0
nan
nan
2_1_base
nan
1x03
Live Tapeworm in Your Brain
73
N
1,000
n
nan
2_2
nan
1x03
Fired for Letting Kids Drive Your Bus
71
V
2,000
y
(can't find exact video)
3
56
1x03
You're Taken Hostage During a Bank Robbery
67
T
0
nan
nan
1_base
nan
1x03
Doctors Misplace Your Bladder
64
V
5,000
y
(can't find video)
4_1
nan
1x03
You Faint During Bride's Vows
58
V
500
y
nan
1_2
nan
1x03
You Butt Dial Your Victim
52
N
15,000
n
nan
4_3
higher
1x03
You and Mom Are Addicted to Cosmetic Surgery
48
N
500
n
nan
1_1
lower
1x03
You are Stuck in Elevator Overnight with Mariah's X-Mas Song on Repeat as the Elevator Song
42
T
0
nan
nan
1_base
nan
1x03
Pop Rocks in Your Vagina
40
N
10,000
n
nan
4_2
higher
1x04
Your Wife Cuts off Your Genitals Twice
92
N
15,000
y
nan
4_3
nan
1x04
Dad Tries to Kill You with a Chainsaw
83
N
0
nan
nan
2_1_base
nan
1x04
You're Stuck in Traffic for 11 Days
79
N
5,000
n
nan
4_1
lower
1x04
Dad Tries to Circumcise You at 20
78
N
1,000
n
nan
2_1
nan
1x04
Your Doctor Isn't a Doctor Just A Teen
71
N
0
nan
nan
2_2_base
nan
1x04
Live Eel Removed from Your Body
70
N
500
y
nan
1_2
nan
1x04
Your Butt Implants Leak
64
N
1,000
n
nan
2_2
nan
1x04
Your Boyfriend Pushes You off a Cliff (you survived it)
59
V
500
y
nan
1_1
nan
1x04
You Have a Wet Dream About Your Dad
54
T
0
nan
nan
1_base
nan
1x04
You lose an election to a dead pimp
57
V
2,000
y
nan
3
46
1x04
You Slam Your Car into a Building
51
N
10,000
n
nan
4_2
lower
1x04
You Are Sprayed by a Skunk
37
T
0
nan
nan
1_base
nan
1x05
Your Surgeon's Mistake Leaves You Legless
100
N
10,000
n
nan
4_2
lower
1x05
Your Landlord pees on Your Lunch
80
V
500
n
nan
1_2
middle
1x05
You Have a Permanent Bald Spot
76
N
1,000
y
nan
2_1
nan
1x05
You Go Hang... Gliding
75
V
2,000
y
nan
3
76
1x05
You Are Attacked by a Sea Lion
69
V
1,000
y
nan
2_2
nan
1x05
You are Struck by Lightning 3 Times
67
V
5,000
n
nan
4_1
lower
1x05
Surprise! You're Having Triplets at 50
60
T
0
nan
nan
1_base
nan
1x05
Your Breast Implants Make Fart Noises
59
N
0
nan
nan
2_1_base
nan
1x05
Your Parents Terrify You
53
V
0
nan
(can't find video)
2_2_base
nan
1x05
You're Caught Lying on TV
50
V
500
y
nan
1_1
nan
1x05
You have a Drunken Makeout with an Old Lady
28
V
15,000
n
(can't find video)
4_3
higher
1x05
Your Drunk Mom Complains About her Sex Life
27
T
0
nan
nan
1_base
nan
1x06
Exploding Vape Breaks Your Jaw
81
N
15,000
n
nan
4_3
higher
1x06
Severely Burn Your Junk
80
N
1,000
y
nan
2_1
nan
1x06
You Get Accidental Man Boobs
73
V
1,000
y
(can't find video)
2_2
nan
1x06
You Give Birth to Twins 87 Days Apart
71
N
0
nan
nan
2_2_base
nan
1x06
Your Wife Changes Your Dating Profile
69
N
10,000
y
nan
4_2
nan
1x06
You Find a Spider Living in Your Ear
62
V
500
n
nan
1_1
middle
1x06
You Win Powerball but you lose the Ticket
58
T
0
nan
nan
1_base
nan
1x06
You Experience Pains of Labor
57
V
2,000
y
nan
3
59
1x06
Watch Your Parents Filming Sex Scenes
52
N
0
nan
nan
2_1_base
nan
1x06
You are accused of chicken shack bomb threat; clarified it was a bowel explosion
43
N
5,000
n
nan
4_1
lower
1x06
Surprise! You Were a Surprise
32
T
500
y
(can't find video)
1_2
nan
1x06
Your Pubes are Caught in your Zipper
21
T
0
nan
nan
1_base
nan
1x07
Explosive Diarrhea Every Time You Orgasm
66
T
0
nan
nan
1_base
nan
1x07
You Have 232 Teeth Removed
65
N
5,000
y
nan
4_1
nan
1x07
You receive 65000 Texts After One Date
60
V
500
y
nan
1_1
nan
1x07
Trapped in Your Tub for 5 Days
59
N
0
nan
nan
2_2_base
nan
1x07
You try to Go to Jail to Escape Wife
59
N
10,000
n
nan
4_2
lower
1x07
Python in Your Toilet
54
V
1,000
n
(can't find video)
2_2
nan
1x07
You all Prayed the Wrong Way for 37 Years
51
N
0
nan
nan
2_1_base
nan
1x07
Dad Nearly Drowns You for Clicks
44
V
500
n
(can't find video)
1_2
higher
1x07
You're Not Infertile Just Doing It Wrong (Anal Sex)
44
N
1,000
y
nan
2_1
nan
1x07
You Tank a Wedding Toast
42
V
2,000
nan
nan
3
36
1x07
You're Stuck on 8 Hour Flight with Demon Child
37
V
15,000
n
nan
4_3
higher
1x07
Your Dog Eats Your Neighbor's Bunny
35
T
0
nan
nan
1_base
nan
1x08
Your Dog Loves Bones
91
N
10,000
y
nan
4_2
nan
1x08
You Confuse a Stick of Dynamite for a Candle
81
V
15,000
y
nan
4_3
nan
1x08
Your Mom Marries Your Son
76
V
500
y
(can't find video)
1_1
nan
1x08
You Snort Grandpa's ashes
69
N
5,000
n
nan
4_1
lower
1x08
You Wake up Covered in Fire Ants
68
T
0
nan
nan
1_base
nan
1x08
Your Husband Wins lottery and Leaves You
66
N
1,000
y
nan
2_1
nan
1x08
You Are Impaled Ta-Dah!
64
N
500
n
nan
1_2
higher
1x08
Everyone Knows You Hate Babies
59
N
0
nan
(article has diff pic than show)
2_2_base
nan
1x08
You Get a Public Prostate Exam
47
V
4,000
y
nan
3
47
1x08
Your Husband Fakes Death to Avoid Paying You
41
N
0
nan
nan
2_1_base
nan
1x08
Your Partner Screams Their Ex's Name During Sex
37
T
0
nan
nan
1_base
nan
1x08
Yes Even YOU as a Bill Mitchell Can Be Hacked
35
O
1,000
n
(orig tweets deleted)
2_2
nan
1x09
You Are Mistakenly Deported
81
T
0
nan
nan
1_base
nan
1x09
You Eat 2 Lbs of Your Own Hair which is then removed from your stomach by doctors
71
N
10,000
n
nan
4_2
lower
1x09
You found a dead mouse inside your can of Red Bull after taking a sip and feeling something hit your lip.
65
N
5,000
n
nan
4_1
lower
1x09
You're a Principal who hired a pole dancer to welcome kindergartners to school
63
N
500
y
nan
1_2
nan
End of preview. Expand in Data Studio
YAML Metadata Warning: The task_categories "text-regression" is not in the official list: text-classification, token-classification, table-question-answering, question-answering, zero-shot-classification, translation, summarization, feature-extraction, text-generation, fill-mask, sentence-similarity, text-to-speech, text-to-audio, automatic-speech-recognition, audio-to-audio, audio-classification, audio-text-to-text, voice-activity-detection, depth-estimation, image-classification, object-detection, image-segmentation, text-to-image, image-to-text, image-to-image, image-to-video, unconditional-image-generation, video-classification, reinforcement-learning, robotics, tabular-classification, tabular-regression, tabular-to-text, table-to-text, multiple-choice, text-ranking, text-retrieval, time-series-forecasting, text-to-video, image-text-to-text, visual-question-answering, document-question-answering, zero-shot-image-classification, graph-ml, mask-generation, zero-shot-object-detection, text-to-3d, image-to-3d, image-feature-extraction, video-text-to-text, keypoint-detection, visual-document-retrieval, any-to-any, video-to-video, other

Misery Index Dataset

Dataset Description

The Misery Index Dataset comprises 516 textual descriptions of real-world or imagined scenarios, each annotated with a corresponding misery score on a continuous scale from 0 (no misery) to 100 (extreme misery). These misery ratings represent subjective estimates of emotional distress associated with each event.

This dataset was created and analyzed in the research paper "Leveraging Large Language Models for Predictive Analysis of Human Misery" by Bishanka Seal, Rahul Seetharaman, Aman Bansal, and Abhilash Nandy.

Note: If the Hugging Face dataset viewer is not available, you can still access the full dataset by downloading the CSV file directly or using the methods shown in the usage examples below.

Dataset Summary

This dataset is designed for research in emotional AI, sentiment analysis, and psychological modeling. It enables researchers to develop and evaluate models that can predict human emotional responses to various life situations with fine-grained precision.

Key Features:

  • 516 scenarios with diverse emotional contexts
  • Continuous scale (0-100) for precise misery measurement
  • Minimal preprocessing to preserve emotional texture
  • Balanced distribution across misery levels
  • Categorized events for structured analysis

Dataset Structure

Data Fields

  • Ep # (string): Source episode identifier (e.g., "1x01", "2x03")
  • Misery (string): A short English-language description of a miserable situation
  • Score (int): Numeric label indicating misery level (0-100 scale)
  • VNTO (string): Content type flag (T=Text, V=Video, N=News, O=Other, P=Punishment)
  • Reward (int): Reward value from original game show context (0-15000)
  • Win (string): Win/loss indicator (y/n)
  • Comments (string): Additional comments, notes, or source information
  • question_tag (string): Question categorization tag
  • level (string): Difficulty or context level

Data Splits

The dataset contains a single train split with 516 examples.

from datasets import load_dataset

# Method 1: Using datasets library (preferred)
dataset = load_dataset("path/to/misery-index")
print(dataset["train"][0])

# Method 2: Direct CSV loading (if dataset viewer unavailable)
import pandas as pd
from huggingface_hub import hf_hub_download

file_path = hf_hub_download("path/to/misery-index", "Misery_Data.csv", repo_type="dataset")
df = pd.read_csv(file_path)
print(df.head())
# Output example:
# {
#   'Ep #': '1x01',
#   'Misery': 'You Send a Nude Selfie to HR by mistake', 
#   'Score': 70,
#   'VNTO': 'T',
#   'Reward': 0,
#   'Win': '',
#   'Comments': '',
#   'question_tag': '1_base',
#   'level': ''
# }

Dataset Statistics

  • Total examples: 516
  • Mean misery score: 56.45
  • Standard deviation: 17.59
  • Score range: 11-100
  • Percentiles:
    • 25th: 43
    • 50th: 56
    • 75th: 69

Category Distribution

  1. Other/Miscellaneous: 26.4%
  2. Family or Relationship Issues: 16.3%
  3. Accidents or Mishaps: 15.3%
  4. Medical Emergencies: ~10%
  5. Embarrassment: ~8%
  6. Physical Injury: ~7%
  7. Animal-related Incidents: ~6%
  8. Crime or Legal Trouble: <5%
  9. Professional/Work-related: <5%
  10. Gross/Disgusting Events: <5%

Research Paper & Code

📄 Paper: "Leveraging Large Language Models for Predictive Analysis of Human Misery"

💻 Code Repository: GitHub - Misery_Data_Exps_GitHub

Data Sources

The data was aggregated from three primary sources:

  1. Misery Index blog curated by Bobby MGSK
  2. Jericho Blog consolidated dataset
  3. Associated Google Spreadsheet with structured entries

Original sources:

Usage Examples

Basic Loading and Exploration

from datasets import load_dataset
import pandas as pd

# Load the dataset
dataset = load_dataset("path/to/misery-index")

# Convert to pandas for analysis
df = dataset["train"].to_pandas()

# Basic statistics
print(f"Dataset size: {len(df)}")
print(f"Average misery score: {df['Score'].mean():.2f}")
print(f"Score range: {df['Score'].min()}-{df['Score'].max()}")

# Sample scenarios by misery level
print("\nLow misery scenarios:")
print(df[df['Score'] < 30]['Misery'].head())

print("\nHigh misery scenarios:")
print(df[df['Score'] > 80]['Misery'].head())

Regression Task

from sklearn.model_selection import train_test_split
from sklearn.feature_extraction.text import TfidfVectorizer
from sklearn.linear_model import LinearRegression
from sklearn.metrics import mean_squared_error

# Prepare features and targets
X = df['Misery'].values
y = df['Score'].values

# Split the data
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)

# Vectorize text
vectorizer = TfidfVectorizer(max_features=1000, stop_words='english')
X_train_vec = vectorizer.fit_transform(X_train)
X_test_vec = vectorizer.transform(X_test)

# Train model
model = LinearRegression()
model.fit(X_train_vec, y_train)

# Predict and evaluate
y_pred = model.predict(X_test_vec)
mse = mean_squared_error(y_test, y_pred)
print(f"Mean Squared Error: {mse:.2f}")

Classification Task (Binned Misery Levels)

import numpy as np
from sklearn.ensemble import RandomForestClassifier

# Create misery level bins
def bin_misery(score):
    if score < 33:
        return "Low"
    elif score < 67:
        return "Medium"
    else:
        return "High"

df['misery_level'] = df['Score'].apply(bin_misery)

# Classification pipeline
X = df['Misery'].values
y = df['misery_level'].values

X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)
X_train_vec = vectorizer.fit_transform(X_train)
X_test_vec = vectorizer.transform(X_test)

clf = RandomForestClassifier(n_estimators=100, random_state=42)
clf.fit(X_train_vec, y_train)

accuracy = clf.score(X_test_vec, y_test)
print(f"Classification Accuracy: {accuracy:.2f}")

Applications

This dataset is valuable for:

  1. Emotion Recognition: Developing models to predict emotional responses to textual scenarios
  2. Psychological Research: Understanding factors that contribute to human distress
  3. Content Moderation: Identifying potentially distressing content
  4. Mental Health Applications: Building tools for emotional support and intervention
  5. Game Design: Creating balanced difficulty curves in narrative games
  6. Educational Tools: Teaching empathy and emotional intelligence

Research Findings

The associated research paper demonstrates several key findings:

  • Few-shot prompting significantly outperforms zero-shot approaches for misery prediction
  • GPT-4o achieved the highest performance with 61.79% accuracy in structured evaluation
  • Binary comparisons are easier for LLMs than precise scalar predictions (74.9% vs 43.1% accuracy)
  • Retrieval-augmented prompting using BERT embeddings improves prediction quality
  • Feedback-driven adaptation enables models to refine predictions iteratively

The "Misery Game Show" evaluation framework introduced in the paper provides a novel approach to testing LLM capabilities in emotional reasoning tasks.

Ethical Considerations

  • Content Warning: Dataset contains descriptions of distressing scenarios including accidents, medical emergencies, and personal tragedies
  • Subjectivity: Misery scores reflect subjective human judgments and may vary across cultures and individuals
  • Bias: Original data sources may contain demographic or cultural biases
  • Use Responsibly: Should not be used to cause distress or for malicious purposes

Limitations

  1. Cultural Bias: Ratings may reflect Western cultural perspectives on distress
  2. Temporal Bias: Scenarios reflect contemporary (2010s-2020s) life situations
  3. Subjectivity: Individual misery perceptions may vary significantly
  4. Limited Scope: May not cover all possible distressing scenarios
  5. Language: English-only content limits cross-cultural applicability

Citation

If you use this dataset in your research, please cite:

@article{seal2024leveraging,
  title={Leveraging Large Language Models for Predictive Analysis of Human Misery},
  author={Seal, Bishanka and Seetharaman, Rahul and Bansal, Aman and Nandy, Abhilash},
  journal={arXiv preprint arXiv:2508.12669},
  year={2024},
  url={https://arxiv.org/pdf/2508.12669}
}

For the dataset specifically:

@dataset{misery_index_2024,
  title={Misery Index Dataset: Textual Scenarios with Emotional Distress Ratings},
  author={Seal, Bishanka and Seetharaman, Rahul and Bansal, Aman and Nandy, Abhilash},
  year={2024},
  url={https://huggingface.co/datasets/path/to/misery-index},
  note={Dataset of 516 scenarios with misery ratings from 0-100},
  howpublished={Hugging Face Datasets}
}

License

This dataset is released under the Creative Commons Attribution 4.0 International License (CC BY 4.0).

Dataset Card Contact

For questions or issues regarding this dataset, please open an issue or contact the dataset maintainers.

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