dynamic faceted search
AIhub monthly digest: November 2024 – dynamic faceted search, the kidney exchange problem, and AfriClimate AI
Welcome to our monthly digest, where you can catch up with any AIhub stories you may have missed, peruse the latest news, recap recent events, and more. This month, we hear from AfriClimate AI co-founder Amal Nammouchi, learn about the kidney exchange problem, and find out how to improve the interpretability of logistic regression models. This month, we had the pleasure of chatting to Amal Nammouchi, co-founder of AfriClimate AI, a grassroots community focused on using artificial intelligence to tackle climate challenges in Africa. Amal told us about the inspiration behind the initiative, some of their activities and projects, and plans for the future. In this blog post, Danial Dervovic writes about work presented at IJCAI 2024 on improving the interpretability of logistic regression models.
Dynamic faceted search: from haystack to highlight
In the digital age, the amount of scholarly articles is growing exponentially. In the Open Research Knowledge Graph's question-answering facility ASK, for example, more than 80 million research articles have already been indexed. Finding the most relevant information from vast collections of scholarly data can be daunting for researchers, students, and academics. To tackle this challenge, search engines and digital libraries often rely on advanced search techniques, one of the most effective being faceted search. Faceted search is an advanced search method that allows users to filter and refine search results based on multiple predefined attributes, known as facets.