Co Occurrence
Co-occurrence analysis investigates the statistical relationships between items, such as words in text, objects in images, or actions in videos. Current research focuses on leveraging co-occurrence information to improve various machine learning tasks, including knowledge representation in language models, object detection, and action recognition, often employing techniques like transformer networks, graph convolutional networks, and association rule mining. Understanding and effectively utilizing co-occurrence patterns is crucial for enhancing the accuracy and generalizability of models across diverse applications, from improving search engine functionality to advancing the field of autonomous driving. Furthermore, research is actively exploring how to mitigate biases stemming from over-reliance on co-occurrence statistics.
Papers
Improving Multi-label Recognition using Class Co-Occurrence Probabilities
Samyak Rawlekar, Shubhang Bhatnagar, Vishnuvardhan Pogunulu Srinivasulu, Narendra Ahuja
CORM: Cache Optimization with Recent Message for Large Language Model Inference
Jincheng Dai, Zhuowei Huang, Haiyun Jiang, Chen Chen, Deng Cai, Wei Bi, Shuming Shi