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		<title>Adding a simple statistic, interesting findings between methods...</title>
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		<description>hypersoniq's Blog: Adding a simple statistic, interesting findings between methods...</description>
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			<title>Original Blog Entry: Adding a simple statistic, interesting findings between methods...</title>
			<link>/blogentry/190555</link>
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			<pubDate>Sun, 13 Apr 2025 13:49:33 GMT</pubDate>
			<dc:creator>hypersoniq</dc:creator>
			<description><![CDATA[<p>It looks like the neutrals in the raw frequency do not necessarily line up with the neutrals in follower frequency.<br /><br />I am specifically looking at the case where the raw frequency of a draw is classified as NNN. Sometimes the follower frequency is classified as NNN, but also there can be colds and hots mixed in for the same classified draw.<br /><br />I already count the number of followers for each column, so the simple add will be getting the percentage of the number of followers to the number of follower samples. If I have 1500 samples and the followers of the last draw first position was 150, then that would be the expected 10%. Maybe the variance in this number might help to decide which classification of follower might end up matching the neutral classification in the raw frequency...<br /><br />Trying to build guidelines so that there is less guesswork in making a pick.<br /><br />I am wondering if there is some other way to apply a frequency count so that a third function can be written to sort of triangulate the whole thing. Free styling at this point.<br /><br />Also, I have to cook up a back test routine and capture the data to get a read on long term trends with the follower frequencies matching up to raw frequency data. I have the rough outline...<br /><br />1. Set the offset to 7, capture that classifier data to a .csv file. In this way, I have something that exactly matches the draw history<br /><br />2. Increment the offset by 7, repeat, but only capture the first 7 in the classifier data.<br /><br />3. Repeat this until the 1500 draws in the follower frequency run out of room at the start of draw history.<br /><br />4. Isolate the classifiers in each and put into a spreadsheet where the classifier combo for each draw can be concatenated... such as NNN and NCH would be written as NNNNCH.<br /><br />5. Find the most frequent combined overall classifier in the resultant list.<br /><br />The hope is to have a fair chance at making one good guess by picking from the neutral list of raw frequency and matching it to the right set from the followers. Hopefully this time I am asking the right questions...<br /><br />Getting bored of not playing anything so I am probably going back to a QP on the PA match 6 until I am ready for live tests. Cost is the same at $14/week.<br /><br />I will be making a new version for writing output, because V3 works and I don&#x27;t intend on losing it... so V4 will be the back test version. Important that I kept V2, because it allowed me to verify the process in V3.<br /><br />Before the Chat GPT era existed, we used to troubleshoot with stack overflow, that is where I found my issue with Pandas series and how to resolve it. Old school!... &#x5b;&#xa0;<a href="/blogentry/190555">More</a>&#xa0;&#x5d;</p>]]></description>
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