understanding the normal distribution bell curve visualization for statistical insights and data analysis |
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This bell-shaped graph, a cornerstone of statistics and data analysis, represents the normal distribution, also known as the Gaussian distribution. The curve's symmetrical form reflects the probability density function, where most data points cluster around the mean, or average value. The tails of the curve, extending infinitely in both directions, indicate that theoretically, extremely high or |
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