I have a dataset. This dataset consists of the data that the actual picture that needs to be drawn, that is, the 100-point graded paper, and the similarity between 100 and 0 points graded pictures that others are trying to draw on it. I obtain this similarity from ORB, SSIM, and VGG16 methods. Parameters in this dataset: ORB, SSIM, VGG16 and GRADED. Using KNN, I calculate the distances between the data in the test dataset and the 3D vector plane. I use k points weighted according to their distance to find the approximate grade. When I looked at using F1 score here, I had doubts about how I should find the TP, TN, FP, FN values. I think True values indicate my data. I thought I should determine whether it is true or false depending on whether it falls within the margin of error I expect based on the orb ssim vgg16 values in the data. I wonder if this is true. If this is the case, wouldn't F1 score give us an evaluation about the dataset?
UPDATE to be clear
this is a project to visually compare the plots drawn by students on an exam paper with the answer key and predict the grade based on the similarity score we get. My nodes are the grades given by the instructor. These nodes have 3 features. ORB, SSIM, VGG16. My dataset, which appears here as an example, is as follows: ORB SSIM VGG16 GRADED
0.7854, 0.71235, 0.682445, 75 .
I have a data list similar to these. Another parameter I use to calculate accuracy here is PREDICTED_GRADE: 71. I want to calculate an accuracy according to these values. I'm not exactly sure what my criteria should be for TP, TN, FP, FN values to calculate with F1 score. What should I give as True and False values? One of the methods I have in mind is that I should set a +- range with the k% error rate that I promised before in this project. I think I can call those within this value range as Positive and those outside of this value range as Negative. So how should I determine the True and False values? Should I use some ORB SSIM VGG16 data that is inconsistent or consistent with grade?