Multidimensional Embedding Comparison with “diemsim”


Distance metrics are essential tools in data analysis and machine learning, helping to measure the similarity or difference between data points. Choosing the right metric impacts the accuracy and interpretation of results, especially in high-dimensional spaces. Our Python library, diemsim implements Dimension Insensitive Euclidean Metric, which surpasses Cosine similarity for Multidimensional Comparisons.

Getting Started:
pip install diemsim

GitHub: https://github.com/BodduSriPavan-111/diemsim



Source link

Leave a Reply

Your email address will not be published. Required fields are marked *