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1. Outliers in data science hold valuable insights and impact analysis and decision-making.
2. Help detect anomalies, understand data distribution, and enhance predictive models.
3. Can be univariate or multivariate, caused by errors or natural variability.
4. Outliers can be detected through visual inspection, statistical methods, and machine learning approaches.
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Outliers are those values that create confusion in our data which leads the data in the wrong direction, it may spoil all the predictions in future analysis. So, bacho outlier see.....
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