Kisii County
RideKE: Leveraging Low-Resource, User-Generated Twitter Content for Sentiment and Emotion Detection in Kenyan Code-Switched Dataset
Etori, Naome A., Gini, Maria L.
Social media has become a crucial open-access platform for individuals to express opinions and share experiences. However, leveraging low-resource language data from Twitter is challenging due to scarce, poor-quality content and the major variations in language use, such as slang and code-switching. Identifying tweets in these languages can be difficult as Twitter primarily supports high-resource languages. We analyze Kenyan code-switched data and evaluate four state-of-the-art (SOTA) transformer-based pretrained models for sentiment and emotion classification, using supervised and semi-supervised methods. We detail the methodology behind data collection and annotation, and the challenges encountered during the data curation phase. Our results show that XLM-R outperforms other models; for sentiment analysis, XLM-R supervised model achieves the highest accuracy (69.2\%) and F1 score (66.1\%), XLM-R semi-supervised (67.2\% accuracy, 64.1\% F1 score). In emotion analysis, DistilBERT supervised leads in accuracy (59.8\%) and F1 score (31\%), mBERT semi-supervised (accuracy (59\% and F1 score 26.5\%). AfriBERTa models show the lowest accuracy and F1 scores. All models tend to predict neutral sentiment, with Afri-BERT showing the highest bias and unique sensitivity to empathy emotion. https://github.com/NEtori21/Ride_hailing
- Africa > Kenya > Nairobi City County > Nairobi (0.07)
- Africa > Kenya > Nairobi Province (0.06)
- Africa > Kenya > Mombasa County > Mombasa (0.05)
- (18 more...)
- Transportation > Passenger (1.00)
- Information Technology (1.00)
- Transportation > Ground > Road (0.93)
State of NLP in Kenya: A Survey
Amol, Cynthia Jayne, Chimoto, Everlyn Asiko, Gesicho, Rose Delilah, Gitau, Antony M., Etori, Naome A., Kinyanjui, Caringtone, Ndung'u, Steven, Moruye, Lawrence, Ooko, Samson Otieno, Kitonga, Kavengi, Muhia, Brian, Gitau, Catherine, Ndolo, Antony, Wanzare, Lilian D. A., Kahira, Albert Njoroge, Tombe, Ronald
Kenya, known for its linguistic diversity, faces unique challenges and promising opportunities in advancing Natural Language Processing (NLP) technologies, particularly for its underrepresented indigenous languages. This survey provides a detailed assessment of the current state of NLP in Kenya, emphasizing ongoing efforts in dataset creation, machine translation, sentiment analysis, and speech recognition for local dialects such as Kiswahili, Dholuo, Kikuyu, and Luhya. Despite these advancements, the development of NLP in Kenya remains constrained by limited resources and tools, resulting in the underrepresentation of most indigenous languages in digital spaces. This paper uncovers significant gaps by critically evaluating the available datasets and existing NLP models, most notably the need for large-scale language models and the insufficient digital representation of Indigenous languages. We also analyze key NLP applications: machine translation, information retrieval, and sentiment analysis-examining how they are tailored to address local linguistic needs. Furthermore, the paper explores the governance, policies, and regulations shaping the future of AI and NLP in Kenya and proposes a strategic roadmap to guide future research and development efforts. Our goal is to provide a foundation for accelerating the growth of NLP technologies that meet Kenya's diverse linguistic demands.
- Europe > Finland > Uusimaa > Helsinki (0.05)
- Africa > Middle East > Somalia (0.04)
- Asia > China (0.04)
- (26 more...)
- Law (1.00)
- Information Technology > Security & Privacy (1.00)
- Health & Medicine (0.68)
- (2 more...)
- Information Technology > Artificial Intelligence > Natural Language > Text Processing (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Machine Translation (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.93)
- (2 more...)
You are what you eat? Feeding foundation models a regionally diverse food dataset of World Wide Dishes
Magomere, Jabez, Ishida, Shu, Afonja, Tejumade, Salama, Aya, Kochin, Daniel, Yuehgoh, Foutse, Hamzaoui, Imane, Sefala, Raesetje, Alaagib, Aisha, Semenova, Elizaveta, Crais, Lauren, Hall, Siobhan Mackenzie
Foundation models are increasingly ubiquitous in our daily lives, used in everyday tasks such as text-image searches, interactions with chatbots, and content generation. As use increases, so does concern over the disparities in performance and fairness of these models for different people in different parts of the world. To assess these growing regional disparities, we present World Wide Dishes, a mixed text and image dataset consisting of 765 dishes, with dish names collected in 131 local languages. World Wide Dishes has been collected purely through human contribution and decentralised means, by creating a website widely distributed through social networks. Using the dataset, we demonstrate a novel means of operationalising capability and representational biases in foundation models such as language models and text-to-image generative models. We enrich these studies with a pilot community review to understand, from a first-person perspective, how these models generate images for people in five African countries and the United States. We find that these models generally do not produce quality text and image outputs of dishes specific to different regions. This is true even for the US, which is typically considered to be more well-resourced in training data - though the generation of US dishes does outperform that of the investigated African countries. The models demonstrate a propensity to produce outputs that are inaccurate as well as culturally misrepresentative, flattening, and insensitive. These failures in capability and representational bias have the potential to further reinforce stereotypes and disproportionately contribute to erasure based on region. The dataset and code are available at https://github.com/oxai/world-wide-dishes/.
- North America > United States (0.88)
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.14)
- Africa > Democratic Republic of the Congo (0.14)
- (98 more...)
- Information Technology > Security & Privacy (1.00)
- Law (0.92)
- Government (0.92)
- Information Technology > Artificial Intelligence > Vision (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Chatbot (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning > Generative AI (0.52)
BART-SIMP: a novel framework for flexible spatial covariate modeling and prediction using Bayesian additive regression trees
Jiang, Alex Ziyu, Wakefield, Jon
Prediction is a classic challenge in spatial statistics and the inclusion of spatial covariates can greatly improve predictive performance when incorporated into a model with latent spatial effects. It is desirable to develop flexible regression models that allow for nonlinearities and interactions in the covariate structure. Machine learning models have been suggested in the spatial context, allowing for spatial dependence in the residuals, but fail to provide reliable uncertainty estimates. In this paper, we investigate a novel combination of a Gaussian process spatial model and a Bayesian Additive Regression Tree (BART) model. The computational burden of the approach is reduced by combining Markov chain Monte Carlo (MCMC) with the Integrated Nested Laplace Approximation (INLA) technique. We study the performance of the method via simulations and use the model to predict anthropometric responses, collected via household cluster samples in Kenya.
- North America > United States (0.46)
- Africa > Kenya > Nairobi City County > Nairobi (0.04)
- Africa > Kenya > Mombasa County > Mombasa (0.04)
- (25 more...)
- Research Report > New Finding (0.46)
- Research Report > Experimental Study (0.46)
MasakhaNER: Named Entity Recognition for African Languages
Adelani, David Ifeoluwa, Abbott, Jade, Neubig, Graham, D'souza, Daniel, Kreutzer, Julia, Lignos, Constantine, Palen-Michel, Chester, Buzaaba, Happy, Rijhwani, Shruti, Ruder, Sebastian, Mayhew, Stephen, Azime, Israel Abebe, Muhammad, Shamsuddeen, Emezue, Chris Chinenye, Nakatumba-Nabende, Joyce, Ogayo, Perez, Aremu, Anuoluwapo, Gitau, Catherine, Mbaye, Derguene, Alabi, Jesujoba, Yimam, Seid Muhie, Gwadabe, Tajuddeen, Ezeani, Ignatius, Niyongabo, Rubungo Andre, Mukiibi, Jonathan, Otiende, Verrah, Orife, Iroro, David, Davis, Ngom, Samba, Adewumi, Tosin, Rayson, Paul, Adeyemi, Mofetoluwa, Muriuki, Gerald, Anebi, Emmanuel, Chukwuneke, Chiamaka, Odu, Nkiruka, Wairagala, Eric Peter, Oyerinde, Samuel, Siro, Clemencia, Bateesa, Tobius Saul, Oloyede, Temilola, Wambui, Yvonne, Akinode, Victor, Nabagereka, Deborah, Katusiime, Maurice, Awokoya, Ayodele, MBOUP, Mouhamadane, Gebreyohannes, Dibora, Tilaye, Henok, Nwaike, Kelechi, Wolde, Degaga, Faye, Abdoulaye, Sibanda, Blessing, Ahia, Orevaoghene, Dossou, Bonaventure F. P., Ogueji, Kelechi, DIOP, Thierno Ibrahima, Diallo, Abdoulaye, Akinfaderin, Adewale, Marengereke, Tendai, Osei, Salomey
We take a step towards addressing the under-representation of the African continent in NLP research by creating the first large publicly available high-quality dataset for named entity recognition (NER) in ten African languages, bringing together a variety of stakeholders. We detail characteristics of the languages to help researchers understand the challenges that these languages pose for NER. We analyze our datasets and conduct an extensive empirical evaluation of state-of-the-art methods across both supervised and transfer learning settings. We release the data, code, and models in order to inspire future research on African NLP.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- North America > United States > California > San Francisco County > San Francisco (0.14)
- Africa > Niger (0.05)
- (52 more...)
AI in education – #MSFTEduChat TweetMeet on February 18
We've all seen stories about artificial intelligence in the news and on social media. Chat bots, speech recognition, machine translation and self-driving cars are just a few of the real-life examples you may have heard about or even experienced first-hand. The impact that AI decision-making has on the economy, society, education and our emotional well-being is tremendous. This begs the question: how well equipped are today's teachers to prepare their students for a world increasingly impacted by artificial intelligence and machine learning, and what opportunities and concerns do these developments bring to education? All educators are most welcome to join any time after the event.
- Asia > Malaysia (0.06)
- North America > United States > Washington > King County > Seattle (0.05)
- North America > United States > Maryland > Anne Arundel County > Severn (0.05)
- (6 more...)
FRANCESCHI: Artificial Intelligence will be the next revolution.
In that room, Masiyiwa had a short conversation with my colleague deans of law schools of Kenyan universities. Every law school was represented. The deans of the University of Nairobi, Kenyatta University, JKUAT, Mount Kenya, CUEA, Kisii, Nazarene and Daystar were present. Riara, Egerton and Kabarak were not in attendance but they had sent their comments beforehand.
- Education > Educational Setting > Higher Education (1.00)
- Education > Curriculum > Subject-Specific Education (1.00)