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metadata
language:
  - en
  - hi
  - zh
  - pt
  - sw
  - he
license: apache-2.0
task_categories:
  - multiple-choice
  - question-answering
size_categories:
  - n<1K
tags:
  - culture
  - multilingual
  - evaluation
pretty_name: Multilingual CulturalBench
configs:
  - config_name: default
    data_files:
      - split: train
        path: multilingual_cultural_bench.csv

Multilingual CulturalBench (Translated Subset)

This dataset is a multilingual extension of the CulturalBench dataset ("Easy" subset). It contains 787 samples from the original benchmark, translated into five additional languages using Gemini-2.5-Flash.

Dataset Description

The original CulturalBench is designed to assess the cultural capabilities of Large Language Models (LLMs). This version extends the "Easy" subset (multiple-choice questions) by providing translations for the questions and options, enabling multilingual cultural evaluation.

Note: This is a partial subset (787 samples) of the original 1,230 "Easy" samples.

Languages

The dataset includes parallel data in the following languages:

  • English (Original)
  • Hindi
  • Chinese (Simplified)
  • Brazilian Portuguese (braz_port)
  • Swahili
  • Hebrew

Statistics

Total Samples: 787

Questions by Country

Country Count Country Count Country Count
China 59 Vietnam 27 United States 20
South Africa 58 United Kingdom 25 Peru 19
Japan 53 Brazil 25 Morocco 17
India 46 Bangladesh 25 Saudi Arabia 17
South Korea 41 Singapore 23 Australia 15
Iran 37 Lebanon 22 Pakistan 14
Hong Kong 36 Nigeria 22 France 14
Argentina 35 Chile 22
Germany 32 Taiwan 22
Nepal 21 Israel 13
Egypt 20 Canada 7 Total 787

Dataset Structure

The dataset is a CSV file (multilingual_cultural_bench.csv) with 33 columns. Each row represents a single question with its translations and ground truth.

Fields

Field Description
question_idx Unique identifier from the original CulturalBench.
english_question The original question in English.
english_option_[a-d] The four options in English.
hindi_question Translated question in Hindi.
hindi_option_[a-d] Translated options in Hindi.
chinese_question Translated question in Chinese.
chinese_option_[a-d] Translated options in Chinese.
braz_port_question Translated question in Brazilian Portuguese.
braz_port_option_[a-d] Translated options in Brazilian Portuguese.
swahili_question Translated question in Swahili.
swahili_option_[a-d] Translated options in Swahili.
hebrew_question Translated question in Hebrew.
hebrew_option_[a-d] Translated options in Hebrew.
answer The correct option label (A, B, C, or D).
country The country/culture the question pertains to.

Sample Questions

Sample 1: South Korea (Dining Etiquette)

Question

Language Question
English In Korean dining etiquette, what is a common practice regarding drinks and paying for the meal?
Hindi कोरियाई भोजन शिष्टाचार में, पेय और भोजन के भुगतान के संबंध में एक सामान्य प्रथा क्या है?
Chinese 在韩国的餐桌礼仪中,关于饮料和买单,常见的做法是什么?
Brazilian Portuguese Na etiqueta de refeições coreana, qual é uma prática comum em relação a bebidas e ao pagamento da refeição?

Options

Language Option A Option B Option C Option D
English Everyone pays for their own meal and drinks. Younger people pour drinks for the elders and the elders pay for the meal. The person who is older always pays, regardless of who did the invitation It's common to split the bill evenly amongst all diners, regardless of age.
Hindi हर कोई अपने भोजन और पेय का भुगतान स्वयं करता है। युवा लोग बड़ों के लिए पेय परोसते हैं और बड़े भोजन का भुगतान करते हैं। जो व्यक्ति बड़ा होता है वह हमेशा भुगतान करता है, भले ही निमंत्रण किसने दिया हो। उम्र की परवाह किए बिना, सभी मेहमानों के बीच बिल को समान रूप से विभाजित करना आम बात है।
Chinese 每个人都支付自己的餐费和饮料费。 晚辈为长辈倒酒,长辈支付餐费。 无论谁邀请的,年长的人总是付钱。 无论年龄大小,所有用餐者平均分摊账单是很常见的。
Brazilian Portuguese Todos pagam sua própria refeição e bebidas. Os mais jovens servem bebidas para os mais velhos e os mais velhos pagam a refeição. A pessoa mais velha sempre paga, independentemente de quem fez o convite. É comum dividir a conta igualmente entre todos os comensais, independentemente da idade.

Correct Answer: Option B

Sample 2: Morocco (Greeting)

Question

Language Question
English In Moroccan culture, how do people typically greet people they know on the street?
Swahili Katika utamaduni wa Moroko, watu huwasalimu vipi watu wanaowajua barabarani?
Hebrew בתרבות המרוקאית, כיצד אנשים מברכים בדרך כלל אנשים שהם מכירים ברחוב?
Chinese 在摩洛哥文化中,人们通常如何问候街上的熟人?

Options

Language Option A Option B Option C Option D
English By saying "peace be upon you" By saying "hello" By hugging them By giving a casual nod.
Swahili Kwa kusema "amani iwe juu yako" Kwa kusema "habari" Kwa kuwakumbatia Kwa kuinama kichwa kawaida.
Hebrew באמירת "שלום עליכם" באמירת "שלום" בחיבוק שלהם בקידה אגבית.
Chinese 说“愿和平降临于你” 说“你好” 拥抱他们 随意地点头致意

Correct Answer: Option A

Usage

You can load this dataset using the Hugging Face datasets library:

from datasets import load_dataset

# Load the dataset
dataset = load_dataset("Lossfunk/Multilingual_CulturalBench")

# Access the 'train' split
train_data = dataset['train']

# Example: Accessing a Hindi question from the first sample
print(train_data[0]['hindi_question'])
print(train_data[0]['hindi_option_a'])