Decolonizing Artificial Intelligence: Reducing Algorithmic Biases in African Educational and Linguistic Contexts
Abstrak
Artificial Intelligence (AI) is reshaping global communication, education, and cultural expression, yet its current models often reinforce algorithmic biases that marginalize African languages and cultural identities. Rooted in Western epistemologies, many AI systems fail to account for the linguistic diversity and socio-cultural realities of African communities. This paper examines how these biases emerge and how decolonizing strategies—centered on participatory design, ethical data practices, and community-based innovation—can reorient AI toward inclusivity and justice. Drawing on a thematic review of African-led AI initiatives such as Masakhane, Lanfrica, and the Ghana NLP Landscape project, the study explores efforts to build corpora, promote indigenous language processing, and integrate cultural knowledge into machine learning systems. The paper employs a critical literature synthesis and case-based analysis to highlight both the promise and challenges of AI-driven language and culture preservation. Key obstacles include the lack of digitized resources, limited local infrastructure, and continued reliance on Western-dominated datasets. Nevertheless, emerging projects illustrate the transformative potential of AI when developed in collaboration with African linguists, communities, and technologists. These efforts foreground indigenous epistemologies and demonstrate that AI can serve as a tool for cultural resurgence rather than erasure. Ultimately, the paper contributes to ongoing debates about algorithmic fairness, ethical AI design, and the imperative to protect Africa’s linguistic and cultural heritage in the digital age. Keywords: Artificial Intelligence, decolonization, African languages, algorithmic bias, cultural representation, participatory design
Penulis (1)
Collins Ketere
Akses Cepat
- Tahun Terbit
- 2025
- Bahasa
- en
- Total Sitasi
- 1×
- Sumber Database
- Semantic Scholar
- DOI
- 10.71060/7qk9nd52
- Akses
- Open Access ✓