DdmrDdmr (OP)
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There are lies, damned lies and statistics. MTwain
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February 15, 2019, 12:13:57 PM Last edit: February 18, 2019, 09:32:53 AM by DdmrDdmr Merited by suchmoon (10), Welsh (10), dbshck (10), Foxpup (9), LoyceV (5), bones261 (4), Halab (2), nutildah (1), Lafu (1), TalkStar (1) |
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1. IntroductionI was curious what trust relations looked like from the reciprocal point of view, with all the combinations between them. Now that I could sum up a little time for it, I gave it a go, wanting to specifically answer: - How many people trust each other mutually? - How many people distrust each other mutually? - How many people distrust each other asymmetrically? (i.e. A trusts B but B distrusts A, or vice-versa). - Who are the top reciprocal trusted /distrusted forum members. To give it all a context, the overall Custom Trust Networks have the following gross related numbers which I keep track of weekly (see Customized Trust Network – Interactive tool to see who we trust/distrust). Date Trust/Dist. rel. Trust rel. Distrust rel. Customized Lists Distinct Trusted/Untrusted 09/02/2019 31450 25710 5740 4145 8855 02/02/2019 31238 25392 5846 4123 8811 26/01/2019 25777 22083 3694 4083 8707 19/01/2019 25387 21811 3576 4052 8662 12/01/2019 23800 20720 3080 3957 8498 05/01/2019 22605 19637 2968 3891 8527
Note: some of the trust networks are recent, and some really old and possibly stale. Since there is no associated date, I cannot use the date as an additional analytical dimension. 2. Reciprocal Trust relationsThere are 3.770 reciprocal trust relations. Since each of these reciprocal trust relations is between two different people, that means that there are 1.885 pairs of people that mutually trust each other. The 3.770 reciprocal trust relations represent 13,11% of the 25.710 positive trust relations. For example, currently, I’m on a "reciprocal Trust relationship" (don’t get me wrong there) with two forum members out of my short and experimental Personal Trust List. A complete list can be found here (first tab): https://docs.google.com/spreadsheets/d/1oI11POXylBm6UqjFeb9JOkxXp2XkN4s9yMKp8To6nrQ/edit?usp=sharingThese are the top 25 forum members with most reciprocal positive Trust relations: R1UserfromName nReciprocalRel nTotalRel % Reciprocal CanaryInTheMine 41 247 16,60% Sampey 35 228 15,35% suchmoon 32 95 33,68% owlcatz 24 95 25,26% BitcoinPenny 24 80 30,00% TMAN 23 117 19,66% OgNasty 20 91 21,98% The Pharmacist 20 45 44,44% xtraelv 20 85 23,53% greenplastic 19 51 37,25% Lauda 19 63 30,16% zazarb 18 28 64,29% theymos 18 67 26,87% qwk 18 35 51,43% Kaznachej123 17 24 70,83% willi9974 17 73 23,29% marlboroza 17 52 32,69% Lafu 16 59 27,12% KWH 15 146 10,27% Thule 15 307 04,89% yogg 15 47 31,91% PsychoticBoy 15 91 16,48% tmfp 15 40 37,50% Deena 15 307 04,89% Coolcryptovator 14 24 58,33%
A complete list can be found here (second tab): https://docs.google.com/spreadsheets/d/1oI11POXylBm6UqjFeb9JOkxXp2XkN4s9yMKp8To6nrQ/edit?usp=sharing3. Reciprocal Distrust relationsThere are only 482 reciprocal distrust relations, corresponding to 241 pairs of people that mutually distrust each other. That seems pretty low with all that is going on. The 480 reciprocal trust relations represent 8,40% of the 5.740 negative trust relations. A complete list can be found here (third tab): https://docs.google.com/spreadsheets/d/1oI11POXylBm6UqjFeb9JOkxXp2XkN4s9yMKp8To6nrQ/edit?usp=sharingThese are the top 25 forum members with most reciprocal Distrust relations: R1UserfromName nReciprocalRel nTotalRel % Reciprocal cryptohunter 22 51 43,14% owlcatz 20 95 21,05% OgNasty 19 91 20,88% Timelord2067 18 135 13,33% Foxpup 17 64 26,56% peloso 16 27 59,26% LFC_Bitcoin 16 58 27,59% Quickseller 13 84 15,48% Lauda 12 63 19,05% TMAN 12 117 10,26% TECSHARE 12 105 11,43% Thule 11 307 03,58% xtraelv 11 85 12,94% suchmoon 9 95 09,47% Hhampuz 9 57 15,79% TheNewAnon135246 7 38 18,42% Bazinga442 7 307 02,28% marlboroza 7 52 13,46% Deena 7 307 02,28% defcon23 6 74 08,11% mocacinno 6 46 13,04% TheFuzzStone 6 21 28,57% H8bussesNbicycles 6 308 01,95% dogie 6 29 20,69% Tomatocage 6 48 12,50%
A complete list can be found here (fourth tab): https://docs.google.com/spreadsheets/d/1oI11POXylBm6UqjFeb9JOkxXp2XkN4s9yMKp8To6nrQ/edit?usp=sharing4. Asymmetrical Trust/Distrust relationsThere are only 116 asymmetrical trust relations, corresponding to 58 pairs of people where one trusts another, but is distrusted back. That may change when they see that fact on the below provided list… A complete list can be found here (fith tab): https://docs.google.com/spreadsheets/d/1oI11POXylBm6UqjFeb9JOkxXp2XkN4s9yMKp8To6nrQ/edit?usp=sharing5. In shortI had no idea what the resulting figures would be until I did the above exercise. The fact that only 13,11% of positive trust relationships are mutual is a bit below what I would have guessed, since I would have expected more "collusion" on that front (of course, looking over the provided lists on a per user case may highlight some cases). The 8,40% of negative trust relationships that are mutual are possibly rather reprisal related, although who knows, and really it should be looked at on a case by case basis. The asymmetries are rather insignificant in number, and therefore not really representative. Side note: I started off thinking that Trust was all related to the business side of things, and had that area of confinement as a centrepiece when looking over trust rates. I think that was the original idea, and as such, delimits in an easier manner the visual interpretation of the Trust figures on the user’s profile. The fact that my initial assumption (from months ago) is not so, and that Trust extends to multiple fields, with diverse conceptual and often subjective application criteria, make the reading of the feedback the means of interpreting the trust scores on one profile, which is more cumbersome that just looking at them to understand a trade related concept.
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Quickseller
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February 15, 2019, 01:46:56 PM |
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Interesting data.
I would be curious to see any patterns of trust circles in which a group of people all trust each other.
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LoyceV
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February 15, 2019, 01:50:58 PM |
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- How many people distrust each other asymmetrically? (i.e. A trusts B but B distrusts A, or vice-versa). Can we call them backstabbers? Seriously though, I think this category is the most interesting one. These are the top 25 forum members with most reciprocal Distrust relations: R1UserfromName nReciprocalRel nTotalRel % Reciprocal cryptohunter 22 51 43,14% He must be so happy to finally be on top of a list 4. Asymmetrical Trust/Distrust relations
There are only 116 asymmetrical trust relations, corresponding to 58 pairs of people where one trusts another, but is distrusted back. That may change when they see that fact on the below provided list… I would have expected more than 58 pairs, considering how many I found already without searching for them. Trusting someone's judgement even though he doesn't trust yours is kinda ironic, but also shows good use of the trust list without being influenced by personal quarrels.
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DdmrDdmr (OP)
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There are lies, damned lies and statistics. MTwain
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February 15, 2019, 02:20:33 PM |
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<…>I would be curious to see any patterns of trust circles in which a group of people all trust each other.
That’s a nice one to try out, although pretty tough on SQL. I may try to see if I can get it done (I think I’ve got the conceptual algorithm, but implementing it is not too easy). <…> I would have expected more than 58 pairs, considering how many I found already without searching for them.
I couldn’t make out anymore with last Saturday’s data (unless I messed up somewhere …). 307 is the number to avoid.
I’m still trying to break the code ..
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LoyceV
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February 15, 2019, 04:43:31 PM |
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<…> I would have expected more than 58 pairs, considering how many I found already without searching for them.
I couldn’t make out anymore with last Saturday’s data (unless I messed up somewhere …). I count to the same number of backstab-relations ( full data is quite messy).
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DdmrDdmr (OP)
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There are lies, damned lies and statistics. MTwain
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February 15, 2019, 04:56:28 PM |
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<...> I count to the same number of backstab-relations <...>
Ok, good, seems that I got it right then. On another note, it could be interesting to derive what @Quickseller suggested. It’s rather more complex although I believe I did do something of the kind with merit a long time ago (but never published it). I’ll take a look into it if I can at some point.
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OgNasty
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February 15, 2019, 04:57:51 PM Last edit: February 15, 2019, 05:53:26 PM by OgNasty |
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You should add in % of total positive or negative trust ratings so there’s some context.
Edit: Sorry, was browsing on my mobile and it got cut off.
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..Stake.com.. | | | ▄████████████████████████████████████▄ ██ ▄▄▄▄▄▄▄▄▄▄ ▄▄▄▄▄▄▄▄▄▄ ██ ▄████▄ ██ ▀▀▀▀▀▀▀▀▀▀ ██████████ ▀▀▀▀▀▀▀▀▀▀ ██ ██████ ██ ██████████ ██ ██ ██████████ ██ ▀██▀ ██ ██ ██ ██████ ██ ██ ██ ██ ██ ██ ██████ ██ █████ ███ ██████ ██ ████▄ ██ ██ █████ ███ ████ ████ █████ ███ ████████ ██ ████ ████ ██████████ ████ ████ ████▀ ██ ██████████ ▄▄▄▄▄▄▄▄▄▄ ██████████ ██ ██ ▀▀▀▀▀▀▀▀▀▀ ██ ▀█████████▀ ▄████████████▄ ▀█████████▀ ▄▄▄▄▄▄▄▄▄▄▄▄███ ██ ██ ███▄▄▄▄▄▄▄▄▄▄▄▄ ██████████████████████████████████████████ | | | | | | ▄▀▀▀▀▀▀▀▀▀▀▀▀▀▀▀▀▀▀▄ █ ▄▀▄ █▀▀█▀▄▄ █ █▀█ █ ▐ ▐▌ █ ▄██▄ █ ▌ █ █ ▄██████▄ █ ▌ ▐▌ █ ██████████ █ ▐ █ █ ▐██████████▌ █ ▐ ▐▌ █ ▀▀██████▀▀ █ ▌ █ █ ▄▄▄██▄▄▄ █ ▌▐▌ █ █▐ █ █ █▐▐▌ █ █▐█ ▀▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▀█ | | | | | | ▄▄█████████▄▄ ▄██▀▀▀▀█████▀▀▀▀██▄ ▄█▀ ▐█▌ ▀█▄ ██ ▐█▌ ██ ████▄ ▄█████▄ ▄████ ████████▄███████████▄████████ ███▀ █████████████ ▀███ ██ ███████████ ██ ▀█▄ █████████ ▄█▀ ▀█▄ ▄██▀▀▀▀▀▀▀██▄ ▄▄▄█▀ ▀███████ ███████▀ ▀█████▄ ▄█████▀ ▀▀▀███▄▄▄███▀▀▀ | | | ..PLAY NOW.. |
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DdmrDdmr (OP)
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There are lies, damned lies and statistics. MTwain
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February 15, 2019, 05:05:17 PM |
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<...>
I did: It's the nTotalRel column, so the % that shows on the nominal lists is based on the number of reciprocal relations out of all the number of forum members trusted or distrusted by a given person. For example, I show as: R1UserfromName nReciprocalRel nTotalRel % Reciprocal DdmrDdmr 2 11 18,18% -> I have reciprocal trust with 2 forum members (18,18%) out of the 11 in my trust/distrust customized (experimental) list.
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LFC_Bitcoin
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February 15, 2019, 09:12:42 PM |
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Interesting data.
I would be curious to see any patterns of trust circles in which a group of people all trust each other.
Well I can tell you one. Most of the posters here ——> https://bitcointalk.org/index.php?topic=5103988.0It’s likely that many of them are alts
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DdmrDdmr (OP)
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February 16, 2019, 01:06:45 PM Last edit: February 17, 2019, 04:08:43 PM by DdmrDdmr |
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<…> I would be curious to see any patterns of trust circles in which a group of people all trust each other.
Something like this: If I detected it properly, there is a complete Trust subgraph between CanadaBits, Funny, gyscam leancuisine, Operatr, P4ndoraBox7, tennozer. It’s a case of 7 accounts that all seem to trust each other. Edit: Better representation using the new tool I created for this excercise: https://fusiontables.google.com/DataSource?docid=18y8mSJwCj7jWpaVGZoVFyXE4WpSPaaQQTJr_3Uf0#chartnew:id=3I’m creating an algorithm to find all the subgraphs, but it’s not complete yet. The above case is the one with most accounts trusting each other that I have found, but as I said, this is (tough) work in progress and I may not succeed in finding all the complete node subgraphs. The chart above is manually parametrized from the subgraph I detected. Canadabits appears in blue for some reason I cannot yet grasp. I took this on as a personal challenge, and there is no intention on judging the actual implied. For all I know, they all trust each other and patrol their domains in good spirit. Actually, none of them have been active for some time now that I’ve taken a peak into the implied accounts.
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Jet Cash
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February 16, 2019, 07:53:38 PM |
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I feel so out of it. I don't think I am in any trust or merit circles. I guess I'm just an old fashioned square.
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Offgrid campers allow you to enjoy life and preserve your health and wealth. Save old Cars - my project to save old cars from scrapage schemes, and to reduce the sale of new cars. My new Bitcoin transfer address is - bc1q9gtz8e40en6glgxwk4eujuau2fk5wxrprs6fys
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suchmoon
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February 16, 2019, 07:54:19 PM |
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Almost 99% of reciprocal trust relations established by vertexes (each of them has far more than 250 earned merits) of that polyhedron which is DT part circulating in the trust system. Coincidence?
Ah shit, I broke the cursed heptagon, forgot to trust gmaxwell. Sorry about that.
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LoyceV
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February 16, 2019, 07:54:54 PM Last edit: February 16, 2019, 08:10:04 PM by LoyceV |
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Almost 99% of reciprocal trust relations established by vertexes (each of them has far more than 250 earned merits) of that polyhedron which is DT part circulating in the trust system. Coincidence? You're going to have to explain how you got to "almost 99%". From those 9 users, I have only 4 on my Trust list: I’m creating an algorithm to find all the subgraphs, but it’s not complete yet. ~ I took this on as a personal challenge Once you figured it out, will you share your algorithm? I can't think of a good way to do this.
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| | Peach BTC bitcoin | │ | Buy and Sell Bitcoin P2P | │ | . .
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▀▀▀▀███████▀▀▀▀ | | EUROPE | AFRICA LATIN AMERICA | | | ▄▀▀▀ █ █ █ █ █ █ █ █ █ █ █ ▀▄▄▄ |
███████▄█ ███████▀ ██▄▄▄▄▄░▄▄▄▄▄ █████████████▀ ▐███████████▌ ▐███████████▌ █████████████▄ ██████████████ ███▀███▀▀███▀ | . Download on the App Store | ▀▀▀▄ █ █ █ █ █ █ █ █ █ █ █ ▄▄▄▀ | ▄▀▀▀ █ █ █ █ █ █ █ █ █ █ █ ▀▄▄▄ |
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DdmrDdmr (OP)
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February 16, 2019, 08:39:52 PM Last edit: February 17, 2019, 04:11:43 PM by DdmrDdmr |
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<…>
<…> The chart is not really "correct" there: What I’m, looking for are all (or at least the greatest) subgraphs that connect all to all of it’s component nodes bidirectionally (i.e. where each vertex represents that A trusts B and vice-versa, meaning that all nodes trust all nodes). In the chart above, @gmaxwell and @suchmoon are clearly not in that situation with the rest. Besides, the Network charting tool, as it is, is good for representing unidirectional vertices, but not bidirectional vertex with the data as I have it represented there. Perhaps if I were to create another representation, with a database that loaded only bidirectional vertex it would lead to a clearer representation (I may look into it later on). What the above char is showing are only unidirectional vertex representations currently (my char was “correct” only because I checked that all those relations I marked as bidirectional were so). -> Something like this would be better: https://www.google.com/fusiontables/DataSource?docid=18y8mSJwCj7jWpaVGZoVFyXE4WpSPaaQQTJr_3Uf0-> All vertices are bidirectional (A trusts B and B trusts A). -> Hover over a node to get a clearer view of the vertices. -> Since the filter already has 5 different names added to it, to work on another different set you need to reset the filter by deleting it (with the cross) and adding it back on from the filter dropdown. -> Enter a number of nodes greater than the max nodes (top left of chart) to see all nodes. Full reciprocal bidirectional relationships (the larger the node, the more reciprocal relationships): <…> Once you figured it out, will you share your algorithm? I can't think of a good way to do this.
If I manage to succeed..., which I'm now rather doubtful. I’ve only got partial results so far and fear I’m missing out combinations. I’ll keep on it when I can get some linear time to do so. Not sure if this is going to be an np-complete kind of problem … Edit: I've tried a different alternative which looks good, based on native SQL Server node and vertex treatment. So far I've derived all complete subgraph (all trust all) for up to 6 nodes, deduplicating paths too (with unpivot and cursors...). Just for test purposes, the complete (all trust all) largest subgraphs I’ve managed to detect with you as a node are: @Actmyname, @DarkStar_, @hilariousandco, @LoyceV, @suchmoon (charted in the above link) @Actmyname, @hilariousandco, @LoyceV, @suchmoon, @The Pharmacist Edit: found one more: @hilariousandco, @LoyceV, @marlboroza, @suchmoon, @The Pharmacist I feel so out of it. I don't think I am in any trust or merit circles.<…>
Found this small all trust all "trust circle": @Jet Cash, @TMAN, @The Pharmacist, @Vod. My algorithm skipped it, but changing parameters it eventually detected it (which means it's not working too well yet). These are all the 6 node complete subgraphs (all trust all)- derived with the new algoritm approach: Funny , gysca , leancuisine , Operatr , P4ndoraBox7 , tennozer CanadaBits , Funny , gysca , Operatr , P4ndoraBox7 , tennozer CanadaBits , Funny , leancuisine , Operatr , tennozer , vCardVideo CanadaBits , leancuisine , Operatr , P4ndoraBox7 , tennozer , vCardVideo CanadaBits , Funny , leancuisine , P4ndoraBox7 , tennozer , vCardVideo CanadaBits , Funny , gysca , leancuisine , Operatr , tennozer devidLeench , natka , pisston , ssuchy , swetka , taktik CanadaBits , gysca , leancuisine , Operatr , P4ndoraBox7 , tennozer CanadaBits , Funny , gysca , leancuisine , Operatr , P4ndoraBox7 CanadaBits , Funny , leancuisine , Operatr , P4ndoraBox7 , tennozer Bazinga442 , Deena , DutchFinity , endlasuresh , gwsukabokepjepang , Thule CanadaBits , Funny , gysca , leancuisine , P4ndoraBox7 , tennozer Funny , leancuisine , Operatr , P4ndoraBox7 , tennozer , vCardVideo marlboroza , owlcatz , qwk , suchmoon , The Pharmacist , xtraelv CanadaBits , Funny , Operatr , P4ndoraBox7 , tennozer , vCardVideo CanadaBits , Funny , leancuisine , Operatr , P4ndoraBox7 , vCardVideo
Note that some are really subsets of a 7 node subgraph.
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DdmrDdmr (OP)
Legendary
Offline
Activity: 2478
Merit: 11045
There are lies, damned lies and statistics. MTwain
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February 17, 2019, 05:50:02 PM |
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<…> I would be curious to see any patterns of trust circles in which a group of people all trust each other.
I think I may have found all the combinations of positive trust, where by all members in a graph all trust each other. What I’ve found are: - 7 members where all trust all: 2 cases (complete graph networks) - 6 members where all trust all: 16 cases (complete graph networks) - 5 members where all trust all: 91 cases(complete graph networks) - 4 members where all trust all: 307 cases(complete graph networks) - 3 members where all trust all: 647 cases(complete graph networks) - 2 members where all trust all: 3.770 cases(complete graph networks) (note: graphs from one level have subgraphs on the levels beneath). I’ve listed them in the last tab ("All trust All") of the link to all the data: https://docs.google.com/spreadsheets/d/1oI11POXylBm6UqjFeb9JOkxXp2XkN4s9yMKp8To6nrQ/edit?usp=sharing <...> Once you figured it out, will you share your algorithm? I can't think of a good way to do this.
Tell me if you want me to describe the process, but what I’ve now used is rather SQL Server based, using commands such as: SELECT row_number() over (order by N1.Username, N2.Username, N3.Username, N4.Username, N5.Username, N6.Username) groupId, N1.Username Username1, N2.Username Username2, N3.Username Username3, N4.Username Username4, N5.Username Username5, N6.Username Username6 into tmp_6nodes FROM ReciprocalTrustNodes N1, ReciprocalTrustNodes N2, ReciprocalTrustNodes N3, ReciprocalTrustNodes N4,ReciprocalTrustNodes N5, ReciprocalTrustNodes N6, ReciprocalTrustEdges E1, ReciprocalTrustEdges E2, ReciprocalTrustEdges E3, ReciprocalTrustEdges E4, ReciprocalTrustEdges E5, ReciprocalTrustEdges E6, ReciprocalTrustEdges E7, ReciprocalTrustEdges E8, ReciprocalTrustEdges E9, ReciprocalTrustEdges E10, ReciprocalTrustEdges E11, ReciprocalTrustEdges E12, ReciprocalTrustEdges E13, ReciprocalTrustEdges E14, ReciprocalTrustEdges E15 WHERE MATCH(N1-(E1)->N2) and MATCH(N2-(E2)->N3) and MATCH(N3-(E3)->N4) and MATCH(N4-(E4)->N5) and MATCH(N5-(E5)->N6) and MATCH(N6-(E6)->N1) and MATCH(N1-(E7)->N5) and MATCH(N1-(E8)->N4) and MATCH(N1-(E9)->N3) and MATCH(N6-(E10)->N4) and MATCH(N6-(E11)->N3) and MATCH(N6-(E12)->N2) and MATCH(N5-(E13)->N2) and MATCH(N5-(E14)->N3) and MATCH(N4-(E15)->N2)
<+ cleansing duplicate cases>
(never used it before, and its does have its limits, but it seems interesting).
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