Interested in concept learning, neuro-symbolic AI and program synthesis
Looking forward to connecting and starting new conversations. Feel free to reach out if you want to chat! 💬
Looking forward to connecting and starting new conversations. Feel free to reach out if you want to chat! 💬
We introduce Vision-Language Programs (VLP), a neuro-symbolic framework that combines the perceptual power of VLMs with program synthesis for robust visual reasoning.
We introduce Vision-Language Programs (VLP), a neuro-symbolic framework that combines the perceptual power of VLMs with program synthesis for robust visual reasoning.
We show how to efficiently apply Bayesian learning in VLMs, improve calibration, and do active learning. Cool stuff!
📝 arxiv.org/abs/2412.06014
We show how to efficiently apply Bayesian learning in VLMs, improve calibration, and do active learning. Cool stuff!
📝 arxiv.org/abs/2412.06014
Using our ICML Bongard in Wonderland setup, it solved 64/100 problems - the best score so far! 📈
However, some issues still persist ⬇️
Using our ICML Bongard in Wonderland setup, it solved 64/100 problems - the best score so far! 📈
However, some issues still persist ⬇️
📄 arxiv.org/abs/2505.244...
#AI #XAI #NeSy #CBM #ML
📄 arxiv.org/abs/2505.244...
#AI #XAI #NeSy #CBM #ML
We challenge Vision-Language Models like OpenAI’s o1 with Bongard problems, classic visual reasoning challenges and uncover surprising shortcomings.
Check out the paper: arxiv.org/abs/2410.19546
& read more below 👇
We challenge Vision-Language Models like OpenAI’s o1 with Bongard problems, classic visual reasoning challenges and uncover surprising shortcomings.
Check out the paper: arxiv.org/abs/2410.19546
& read more below 👇