|

What is the difference between median and average starting salary

⏱ ~4 min read  •  729 words
📅 Published:  •  ✓ Fact-checked:


I’m trying to figure out the best way to understand what a "typical" starting salary is for a particular job or industry, and I keep seeing both "average" (mean) and "median" salary figures reported. It’s confusing because sometimes they’re pretty close, and other times they’re way off.

Specifically, I’m looking at entry-level data science roles. Let’s say I see a report that claims the "average starting salary" for a data scientist is $85,000 and another report that says the "median starting salary" is $78,000. What accounts for that $7,000 difference? Which one should I pay more attention to when negotiating my own salary? Are there specific situations where one is a more reliable indicator than the other? Also, is there a different calculation or method for each that is important to know?

Answer

The terms "median starting salary" and "average starting salary" (often referred to as the mean) represent different ways of summarizing the typical starting salary for a group of individuals. They can provide contrasting insights into the distribution of salaries and the presence of outliers. Here’s a detailed breakdown of the differences:

Average (Mean) Starting Salary:

  • Definition: The average starting salary is calculated by summing up all the individual starting salaries in a dataset and then dividing by the total number of salaries.

  • Formula: Average = (Sum of all salaries) / (Number of salaries)

  • Sensitivity to Outliers: The average is highly sensitive to extreme values or outliers. Outliers are salaries that are significantly higher or lower than the majority of the salaries in the dataset. A few very high salaries can disproportionately inflate the average, making it appear higher than what most people actually earn. Similarly, a few very low salaries can pull the average down.

  • Example: Consider the following set of starting salaries: \$40,000, \$45,000, \$50,000, \$55,000, \$60,000, \$70,000, \$150,000. The average starting salary would be (\$40,000 + \$45,000 + \$50,000 + \$55,000 + \$60,000 + \$70,000 + \$150,000) / 7 = \$67,142.86. Notice how the \$150,000 salary significantly skews the average upwards.

Median Starting Salary:

  • Definition: The median starting salary is the middle value in a dataset when the salaries are arranged in ascending or descending order. In other words, it’s the salary that separates the higher half of the salaries from the lower half.

  • Calculation:

    • If there’s an odd number of salaries, the median is the middle value.
    • If there’s an even number of salaries, the median is the average of the two middle values.
  • Robustness to Outliers: The median is much less sensitive to outliers than the average. Because it only considers the central position in the ordered dataset, extreme values have little to no impact on the median.

  • Example: Using the same set of starting salaries as before: \$40,000, \$45,000, \$50,000, \$55,000, \$60,000, \$70,000, \$150,000. Arranging them in ascending order, the median starting salary is \$55,000. The outlier of \$150,000 does not affect the median value.

Key Differences Summarized:

Feature Average (Mean) Median
Definition Sum of values divided by the number of values Middle value in an ordered dataset
Sensitivity to Outliers Highly sensitive Robust to outliers
Interpretation Represents the typical value if salaries were evenly distributed Represents the point where half of the salaries are above and half are below

Which Measure to Use?

  • Skewed Distributions: When dealing with salary data, which is often skewed (i.e., has a long tail of high salaries), the median is usually a better measure of central tendency than the average. It provides a more accurate representation of what a "typical" person earns.

  • Symmetrical Distributions: If the distribution of salaries is relatively symmetrical (i.e., the salaries are evenly spread around the center), the average and median will be similar.

  • Understanding the Context: Consider the purpose of the analysis. If you want to understand the total compensation being distributed, the average might be useful. However, if you want to understand what a "typical" new graduate can expect to earn, the median is generally more informative.

In Conclusion:

The median and average starting salaries offer different perspectives on the central tendency of a dataset. The average is susceptible to distortion by extreme values, while the median provides a more stable and representative measure, particularly when dealing with skewed salary distributions. When comparing starting salaries, it’s important to understand which measure is being used and the implications of that choice. It is also essential to examine the distribution itself, if possible, to gain a more complete understanding of the data.

This content has been prepared by the Studentanswers editorial team for educational and informational purposes only. We recommend consulting a qualified professional before making any personal decisions.

Studentanswers Editorial Team
Written by

Studentanswers Editorial Team

University Admissions, GPA, SAT/ACT, Teacher Careers, Student Finance Expertise: Education Content Specialist & Research Writer 19+ years of experience

I'm Mustafa Bulut, an education researcher and content specialist with over a decade of experience helping students navigate the complexities of academic life — from decoding GPA scales to understanding what top universities actually look for in applicants. My work focuses on making higher education accessible and understandable. I've spent years researching university admissions processes, standardized testing systems (SAT, ACT, TOEFL), and the real-world career paths that follow graduation. Whether you're a high school junior trying to figure out if your GPA is competitive for Ivy League schools, or an adult learner weighing the cost of going back to school, I write with you in mind. I cover five core areas on StudentAnswers: university admissions and GPA benchmarks, SAT and ACT test preparation strategies, teacher career outlooks and education job markets, global literacy trends and education access, and student finance including loans, scholarships, and hidden costs of higher education. Before launching StudentAnswers, I worked extensively with education data — analyzing acceptance rates, salary statistics for education professionals, and literacy reports from UNESCO and national education departments. I believe that good education content should give readers a clear answer, not just more questions. Every article I publish goes through a research and editorial review process. I cite primary sources wherever possible — official university data, government labor statistics, and peer-reviewed education research — because students deserve accurate information when making decisions that shape their futures.

✓ Reviewed by: Studentanswers Editorial Team ✓ Fact-checked: 13 October 2025

Similar Posts