How can clustering algorithms help in outlier detection?
Clustering algorithms are a cornerstone of unsupervised learning in data science, often used to group similar data points together. However, they can also play a crucial role in detecting anomalies or outliers within a dataset. An outlier is a data point that deviates significantly from the majority of data, potentially indicating errors or novel insights. By understanding how clustering can be used for outlier detection, you can enhance your data analysis and uncover hidden patterns that might otherwise be overlooked.
-
Tavishi JaglanData Science Manager @Publicis Sapient | 4xGoogle Cloud Certified | Gen AI | LLM | RAG | Graph RAG | LangChain | ML |…
-
Cyril ShajiData Scientist @ IBM |??10 X National Analytics Case Competition Winner | 20+ National Finalists | Unstop Top Mentor |…
-
Anurag Singh KushwahCo-founder & Data Scientist | Mentoring the Next Generation | Expert in AI and ML and Data Engineering