--- datasets: - name: UniGame Dataset task_categories: - text-classification license: mit tags: - machine learning - data science - mental health pretty_name: UniGame size_categories: - n<1K --- # UniGame Dataset This dataset explores the relationship between gaming habits and academic performance among students. It includes various attributes such as age, educational level, CGPA, gaming habits, and other related factors. ## Dataset Details ### Dataset Description This dataset aims to investigate how gaming affects the academic performance of students. It includes information on the respondents' demographics, gaming habits, and academic results. - **Curated by:** Hossain et. al - **Language(s):** English - **License:** MIT ## Uses ### Direct Use This dataset can be used for various purposes, including but not limited to: - Analyzing the impact of gaming on academic performance. - Studying the correlation between gaming habits and lifestyle factors. - Developing machine learning models to predict academic performance based on gaming habits and other related factors. ### Out-of-Scope Use This dataset should not be used for malicious purposes or any application that the dataset is not suitable for. ## Dataset Structure ### Files The dataset consists of two files: - `train.csv`: The training set. - `test.csv`: The testing set. ### Columns The dataset contains the following columns: 1. **What is your age?**: The age of the respondent. 2. **Current educational position?**: The educational level of the respondent. 3. **Gender?**: The gender of the respondent. 4. **Your current CGPA?**: The current CGPA of the respondent. 5. **Your Higher Secondary School(H. SC) or A level or equivalent result?**: The higher secondary school result of the respondent. 6. **At what age you had started playing games?**: The age at which the respondent started playing games. 7. **Do you play games on mobile or pc?**: The platform on which the respondent plays games. 8. **When you go to sleep?**: The time the respondent goes to sleep. 9. **Do you attend your morning class regularly?**: Whether the respondent attends morning classes regularly. 10. **The average time you spend playing games?**: The average time the respondent spends playing games. 11. **Do you play paid or non-paid games?**: Whether the respondent plays paid or non-paid games. 12. **How many time you spend with family and friend?**: The time the respondent spends with family and friends. 13. **How you fill when you can not play game in whole day?**: The respondent's feeling when they cannot play games for a whole day. 14. **How you fill to complete game level?**: The respondent's feeling when they complete a game level. 15. **If you didn't finish games last level what is your feeling?**: The respondent's feeling if they didn't finish the last level of a game. 16. **Do you fill Fatigue?**: Whether the respondent feels fatigue. 17. **Do you play games for stress relief?**: Whether the respondent plays games for stress relief. 18. **Are you wearing glasses?**: Whether the respondent wears glasses. ## Dataset Creation ### Curation Rationale The dataset was created to understand the impact of gaming on students' academic performance and lifestyle. It aims to provide insights that can help educators and policymakers make informed decisions. ### Source Data #### Data Collection and Processing The data was collected through a structured questionnaire filled out by students. The responses were then processed to ensure consistency and accuracy. #### Who are the source data producers? The source data was produced by students who participated in the survey. Their responses were anonymized to protect their privacy. ### Annotations #### Annotation process No additional annotations were made to the dataset beyond the initial data collection. #### Who are the annotators? The respondents themselves provided the data. #### Personal and Sensitive Information The dataset contains information that might be considered personal, such as age, gender, and academic results. All data was anonymized to ensure the privacy of the respondents. ## Bias, Risks, and Limitations Users should be aware of potential biases in the dataset, as it may not represent all student populations equally. The dataset should be used with caution, considering its limitations. ### Recommendations Users should consider the biases, risks, and limitations of the dataset. It is recommended to use the dataset in conjunction with other data sources to ensure robust analysis. ## Usage To load and use this dataset, you can use the following code snippets in Python: ### Loading the dataset with Hugging Face Datasets library ```python from datasets import load_dataset # Load the dataset dataset = load_dataset("ismail31415/uniGame") # Access the training and testing sets train_df = dataset['train'] test_df = dataset['test']