Madaripur District
BanStereoSet: A Dataset to Measure Stereotypical Social Biases in LLMs for Bangla
Kamruzzaman, Mahammed, Monsur, Abdullah Al, Das, Shrabon, Hassan, Enamul, Kim, Gene Louis
This study presents BanStereoSet, a dataset designed to evaluate stereotypical social biases in multilingual LLMs for the Bangla language. In an effort to extend the focus of bias research beyond English-centric datasets, we have localized the content from the StereoSet, IndiBias, and Kamruzzaman et. al.'s datasets, producing a resource tailored to capture biases prevalent within the Bangla-speaking community. Our BanStereoSet dataset consists of 1,194 sentences spanning 9 categories of bias: race, profession, gender, ageism, beauty, beauty in profession, region, caste, and religion. This dataset not only serves as a crucial tool for measuring bias in multilingual LLMs but also facilitates the exploration of stereotypical bias across different social categories, potentially guiding the development of more equitable language technologies in Bangladeshi contexts. Our analysis of several language models using this dataset indicates significant biases, reinforcing the necessity for culturally and linguistically adapted datasets to develop more equitable language technologies.
- Asia > Bangladesh > Dhaka Division > Dhaka District > Dhaka (0.05)
- Asia > Afghanistan (0.04)
- North America > United States > Florida (0.04)
- (3 more...)
Agricultural Recommendation System based on Deep Learning: A Multivariate Weather Forecasting Approach
Zubair, Md, Salim, Md. Shahidul, Rahman, Mehrab Mustafy, Basher, Mohammad Jahid Ibna, Imran, Shahin, Sarker, Iqbal H.
Bangladesh is predominantly an agricultural country, where the agrarian sector plays an essential role in accelerating economic growth and enabling the food security of the people. The performance of this sector has an overwhelming impact on the primary macroeconomic objectives like food security, employment generation, poverty alleviation, human resources development, and other economic and social forces. Although Bangladesh's labor-intensive agriculture has achieved steady increases in food grain production, it often suffered from unfavorable weather conditions such as heavy rainfall, low temperature, and drought. Consequently, these factors hinder the production of food substantially, putting the country's overall food security in danger. In order to have a profitable, sustainable, and farmer-friendly agricultural practice, this paper proposes a context-based crop recommendation system powered by a weather forecast model. With extensive evaluation, the multivariate Stacked Bi-LSTM Network is employed as the weather forecasting model. The proposed weather model can forecast Rainfall, Temperature, Humidity, and Sunshine for any given location in Bangladesh with higher accuracy. These predictions guide our system to assist the farmers in making feasible decisions about planting, irrigation, harvesting, and so on. Additionally, our full-fledged system is capable of alerting the farmers about extreme weather conditions so that preventive measures can be undertaken to protect the crops. Finally, the system is also adept at making knowledge-based crop suggestions for the flood and drought-prone regions of Bangladesh.
- Asia > Bangladesh > Dhaka Division > Dhaka District > Dhaka (0.07)
- Asia > Bangladesh > Rangpur Division > Rangpur District > Rangpur (0.04)
- Oceania > Australia > Western Australia > Perth (0.04)
- (7 more...)