Ian, I’m baffled by your account of the soccer match data, for 2 reasons:
1) Your Y-values aren’t probabilities (and they go the wrong way).
They are probabilities. Perhaps it would help if I pasted in a couple of the tables here.
(Oops, just finished my post and discovered that I'm unable to paste in properly. Why the hell can't we paste something simple like a table!)
HOW MANY GOALS WILL THERE BE?
PRE-MATCH EXPECTATION: 2.2
So far 0 So far 1 So far 2
MINUTE Under 2.5 Over 2.5 Under 2.5 Over 2.5 Under 2.5 Over 2.5
1.00 1.60 2.66 - - - -
6.00 1.55 2.83 2.64 1.61 7.95 1.14
11.00 1.49 3.05 2.48 1.68 7.25 1.16
16.00 1.43 3.33 2.32 1.76 6.57 1.18
21.00 1.37 3.67 2.17 1.86 5.94 1.20
26.00 1.32 4.10 2.02 1.98 5.35 1.23
31.00 1.27 4.65 1.89 2.12 4.81 1.26
36.00 1.23 5.35 1.77 2.31 4.31 1.30
41.00 1.19 6.28 1.65 2.54 3.86 1.35
46.00 1.15 7.86 1.53 2.90 3.37 1.42
51.00 1.12 9.70 1.44 3.30 3.01 1.50
56.00 1.09 12.60 1.35 3.88 2.67 1.60
61.00 1.06 17.34 1.27 4.75 2.36 1.74
66.00 1.04 25.73 1.20 6.12 2.07 1.93
71.00 1.02 42.35 1.13 8.52 1.82 2.22
76.00 1.01 81.58 1.08 13.37 1.59 2.68
81.00 1.00 205.11 1.04 26.21 1.39 3.55
86.00 1.00 895.32 1.01 90.78 1.21 5.66
PRE-MATCH EXPECTATION: 3.2
So far 0 So far 1 So far 2
MINUTE Under 2.5 Over 2.5 Under 2.5 Over 2.5 Under 2.5 Over 2.5
1.00 2.61 1.62 - - - -
6.00 2.44 1.69 5.24 1.24 20.13 1.05
11.00 2.27 1.79 4.73 1.27 17.61 1.06
16.00 2.11 1.90 4.25 1.31 15.29 1.07
21.00 1.96 2.04 3.81 1.36 13.20 1.08
26.00 1.82 2.22 3.40 1.42 11.34 1.10
31.00 1.69 2.45 3.04 1.49 9.71 1.11
36.00 1.57 2.74 2.72 1.58 8.29 1.14
41.00 1.47 3.12 2.43 1.70 7.06 1.16
46.00 1.36 3.76 2.13 1.88 5.81 1.21
51.00 1.29 4.49 1.92 2.08 4.94 1.25
56.00 1.22 5.63 1.73 2.38 4.15 1.32
61.00 1.15 7.47 1.55 2.81 3.47 1.41
66.00 1.10 10.65 1.40 3.49 2.88 1.53
71.00 1.06 16.83 1.27 4.66 2.38 1.72
76.00 1.03 31.11 1.17 6.94 1.97 2.03
81.00 1.01 75.15 1.09 12.63 1.62 2.62
86.00 1.00 317.69 1.03 36.85 1.33 4.06
I have 6 such tables which I copied from a book (the definitive guide to betting exchanges). These are the probabilities that the author reckons hold for there either being less or more than 2.5 goals in a football (soccer) match as the match progresses. It lists the probabilities for there being so far 0, 1 or 2 goals. The 6 tables represent the pre-match expectation of 2.2, 2.4, 2.6, 2.8, 3.0, and 3.2 Goals of which I've just pasted in the first and last. The figures I quoted in my opening post are from the first minute (i.e right at the beginning of the match) for there being
under 2.5 goals as the pre-match expectation of goals increases from 2.2 to 3.2 goals. Now the greater number of goals we expect on average before the match, the less probable that there will be less than 2.5 goals.
That is why y decreases.
What I'm going to do is to have just one table, and when I enter the pre-match goal expectation in a cell it will tell me all the probabilities for getting less or more than 2.5 goals as the match progresses. I needed to find the relationship between the probability for under and over 2.5 goals for each 5 minute interval in the game as the pre-match goal expectation increases. That way I can enter any value into the cell eg a pre-match expectation of 2.7 goals, and obtain all the appropriate probabilities (the mathematical relationship I obtained told me the probability for a table generated by inputting a pre-match goal expectation wasn't simply half way between the values in a 2.6 and 2.8 tables).
I also intend to generate tables for the probabilities for there being under and over 1.5 goals as the match progresses, and the same goes for under and over 3.5 goals, under and over 4.5 goals, under and over 5.5 goals and under and over 6.5 goals.
Why am I doing all this? I expect everyone has guessed. It is for the purposes of gambling on the total number of goals in football matches whilst a match progresses.
2) Whatever they are, I suppose the Y-values were derived from the X-values, so I don’t understand why you want to find the relation by regression analysis.
Regression analysis?? What's that? The thing is I don't know where the guy who produced the tables got his figures from. He simply says this is what he reckons the probabilities are. Actually I did discover yesterday where he got the figures from for the probabilities before the match, or in the first minute. They are obtained from applying a poisson distribution to the average pre-match expected goal total. (I don't know what a poisson distribution is, but I don't need to because excel has it built in!). However I'm unable to determine why the probabilities diminish and increase the way they do as teh match progresses. I would have thought that the probabilities would decrease and increase uniformly (linearly?). But they don't.
You can’t re-create a defined relationship from the numbers, unless you know the form of the equation and just want to calculate the coefficients (and even then you will have rounding errors).
Please give more details!
You'll need to speak in English. I don't understand what co-efficients mean.
Anyway I've provide much more detail, so hopefully you should understand what I'm doing.