Study reveals Top Marks AI achieving 0.89 correlation with Edexcel for Nineteenth Century: Extract Question

AI Marking for Schools: Top Marks AI Achieves 0.89 Correlation on Edexcel English Literature - Nineteenth Century: Extract Question

Study reveals Top Marks AI achieving 0.89 correlation with Edexcel for Nineteenth Century: Extract Question, November 3, 2025

AI Marking for Teachers Achieves 0.89 Correlation for Edexcel's Nineteenth Century: Extract Question

"How well does AI perform on GCSE English Literature assessments?" We encounter this question regularly when speaking with teachers and educational institutions.

As such, we've been systematically testing to prove the accuracy of the Top Marks' GCSE English Literature AI marking tools really are. The results speak for themselves!

In this experiment, we will be examining Edexcel English Literature -- specifically, the Nineteenth Century: Extract Question.

Edexcel makes available numerous exemplar essays for their exam papers and we've put our tool to the test using 63 of those very same exam board approved standardisation materials. These exemplars showcase a broad spectrum of answer quality. These essays are provided for standardisation purposes - so teachers can see what different levels of responses actually look like in practice.

We took 63 of these essays and ran them through our dedicated marking tool. Then we measured the correlation between the official marks the board awarded each essay, and the marks Top Marks AI assigned to those same essays.

We used a measurement called the Pearson correlation coefficient. In short:

  • • A value of 1 would mean perfect correlation -- when one marker assigns a high score, the other always does too, and when one assigns a low score, the other always does too.
  • • A value of 0 means no correlation whatsoever -- knowing one marker's score tells you nothing about what the other marker awarded.
  • • Negative values would mean the markers systematically disagree - when one assigns high scores, the other assigns low scores.

For context, how do humans perform?

What sort of correlation do experienced human markers achieve when marking essays already marked by a lead examiner?

Cambridge Assessment conducted a rigorous study to measure precisely this. 200 GCSE English scripts - which had already been marked by a chief examiner - were sent to a team of experienced human markers. These experienced markers were not told what the chief examiner had given these scripts. Nor were they shown any annotations.

The Pearson correlation coefficient between the scores these experienced examiners gave and the chief examiner was just below 0.7. This indicated a positive correlation, though far from perfect. If you are interested, you can find the study here.

How did Top Marks AI perform?

Top Marks, across the 63 essays, achieved a correlation of 0.89 -- an incredibly strong positive correlation that far outperforms the experienced human markers in the Cambridge study. (Top Marks AI was also not privy to the "correct marks" or any annotations).

Moreover, 66.67% of the marks we gave were within 2 marks of the grade given by the chief examiner.

Another interesting metric is the Mean Absolute Error, for which our system scored 1.70. On average, the AI differed from the board by 1.70 marks, which is comfortably within 2 marks. As a percentage, that's an average of 8.5% difference.

In contrast, in that same Cambridge study, experienced examiners marking a 40-mark question showed a Mean Absolute Error of 5.64 marks, that's a difference of 14.1%. These results highlight the exceptional accuracy of Top Marks AI compared to traditional marking practices.

We don't claim that Top Marks is infallible, but when it does get things wrong, just how bad is it? Well, let's turn to the Root Mean Square Error to find out. Root Mean Square Error (RMSE) is a measure of the severity of large errors. When you square the number 1, you still get 1, and when you square 2, you still only make a small jump to 4. But square 5, and you're suddenly all the way up at 25. That's how RMSE works - it (essentially!) highlights large errors by squaring them.

Top Marks AI's Root Mean Square Error was 2.32, meaning even when larger errors occur, they remain remarkably small relative to the 20-mark scale.

You can see the full side-by-side human and AI scores below.

Essay IDBoard ScoreTop Marks AI ScoreDifference
June 2024 Silas Marner 6 (A) (11).pdf11.014.8+3.8
June 2024 Pride and Prejudice 5 (A) (19).pdf19.018.8-0.2
June 2024 P A Cristmas Carol 4 (A) (6).pdf6.08.5+2.5
June 2024 Jane Eyre 1 (A) (19).pdf19.017.9-1.1
June 2024 Great Expectations 2 (A) (16).pdf16.019.6+3.6
June 2024 Frankenstein 7 (A) (8).pdf8.09.6+1.6
June 2024 Dr Jekyll and Mr Hyde 3 (A) (20).pdf20.019.7-0.3
June 2024 Dr Jekyll and Mr Hyde 3 (A) (14).pdf14.016.1+2.1
June 2024 A Cristmas Carol 4 (A) (20).pdf20.019.6-0.4
June 2024 A Cristmas Carol 4 (A) (11).pdf11.015.6+4.6
June 2023 Silas Marner 6 (A) (12).pdf12.018.4+6.4
June 2023 Pride and Prejudice 5 (A) (20).pdf20.020.0+0.0
June 2023 Pride and Prejudice 5 (A) (11).pdf11.010.7-0.3
June 2023 Jane Eyre 1 (-) (11).pdf11.011.7+0.7
June 2023 Great Expectations 2 (A) (15).pdf15.019.7+4.7
June 2023 Frankenstein 7 (A) (15).pdf15.015.3+0.3
June 2023 Dr Jekyll and Mr Hyde 3 (A) (20).pdf20.016.1-3.9
June 2023 Dr Jekyll and Mr Hyde 3 (A) (10).pdf10.011.5+1.5
June 2023 A Christmas Carol 4 (A) (5).pdf5.05.8+0.8
June 2023 A Christmas Carol 4 (A) (20).pdf20.020.0+0.0
June 2023 A Christmas Carol 4 (A) (12).pdf12.013.2+1.2
June 2022 Silas Marner 6 (A) (20).pdf20.019.4-0.6
June 2022 Pride and Prejudice 5 (A) (14).pdf14.017.7+3.7
June 2022 Jane Eyre 1 (A) (20).pdf20.019.2-0.8
June 2022 Great Expectations 2 (A) (11).pdf11.011.0+0.0
June 2022 Frankenstein 7 (A) (7).pdf7.08.4+1.4
June 2022 Frankenstein 7 (A) (12).pdf12.09.4-2.6
June 2022 Dr Jekyll and Mr Hyde 3 (A) (7).pdf7.08.1+1.1
June 2022 Dr Jekyll and Mr Hyde 3 (A) (18).pdf18.020.0+2.0
June 2022 Dr Jekyll and Mr Hyde 3 (A) (11).pdf11.012.4+1.4
June 2022 A Cristmas Carol 4 (A) (7).pdf7.07.1+0.1
June 2022 A Cristmas Carol 4 (A) (6).pdf6.07.0+1.0
June 2022 A Cristmas Carol 4 (A) (20).pdf20.020.0+0.0
June 2022 A Cristmas Carol 4 (A) (13).pdf13.015.8+2.8
June 2022 A Cristmas Carol 4 (A) (12).pdf12.010.7-1.3
June 2019 Silas Marner 6 (A) (16).pdf16.012.0-4.0
June 2019 Pride and Prejudice 5 (A) (18).pdf18.015.9-2.1
June 2019 Jane Eyre 1 (A) (10).pdf10.010.0+0.0
June 2019 Great Expectations 2 (A) (14).pdf14.020.0+6.0
June 2019 Frankenstein 7 (A) (20).pdf20.018.2-1.8
June 2019 Dr Jekyll Mr Hyde 3 (A) (20).pdf20.019.0-1.0
June 2019 Dr Jekyll Mr Hadi 3 (A) (8).pdf8.08.9+0.9
June 2019 A Cristmas Carol 4 (A) (7).pdf7.07.5+0.5
June 2019 A Cristmas Carol 4 (A) (20).pdf20.020.0+0.0
June 2019 A Cristmas Carol 4 (A) (10).pdf10.08.9-1.1
JUNE 2018 Silas Marner 6 (A) (16).pdf16.012.1-3.9
June 2018 Pride and Prejudice 5 (A) (13).pdf13.017.2+4.2
June 2018 Jane Eyre 1 (A) (20).pdf20.020.0+0.0
June 2018 Great Expectations 2 (A) (10).pdf10.010.8+0.8
June 2018 Frankenstein 7 (A) (9).pdf9.09.4+0.4
June 2018 Dr Jekyll and Mr Hyde 3 (A) (16).pdf16.014.9-1.1
June 2018 A Cristmas Carol 4 (A) (5).pdf5.02.2-2.8
June 2018 A Cristmas Carol 4 (A) (10).pdf10.014.3+4.3
June 2017 Silas Marner 6 (A) (7).pdf7.09.6+2.6
June 2017 Pride and Prejudice 5 (A) (12).pdf12.011.1-0.9
June 2017 Great Expectations 2 (A) (15).pdf15.016.1+1.1
June 2017 Frankenstein 7 (A) (20).pdf20.020.0+0.0
June 2017 Frankenstein 7 (A) (11).pdf11.08.1-2.9
June 2017 Dr Jekyll and Mr Hyde 3 (A) (2).pdf2.01.9-0.1
June 2017 Dr Jekyll and Mr Hyde 3 (A) (10).pdf10.07.7-2.3
June 2017 A Christmas Carol 4 (A) (17).pdf17.015.6-1.4
June 2017 A Christmas Carol 4 (A) (17).pdf17.016.1-0.9
June 2017 A Christmas Carol 4 (A) (10).pdf10.011.1+1.1

Can I see a graph to help me visualise this?

Absolutely.

First, here's a scatter graph to show you what a theoretical perfect correlation of 1 would look like:

Perfect Correlation Graph

Now, let's look at the real-life graph, drawn from the data above:

Actual Correlation Graph for Edexcel Nineteenth Century: Extract Question

On the horizontal axis, we have the grade given by the exam board. On the vertical, the grade given by Top Marks AI. The individual dots are the essays -- their position tells us both the mark given by the exam board and by Top Marks AI. You can see how closely it resembles the theoretical graph depicting perfect correlation.

Discover how Top Marks AI can revolutionise assessment in education. Contact us at info@topmarks.ai.

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