ez4u wrote:Wow! With that kind of flexibility on display I am worried you might be outgrowing L19.
Nah, I've always been flexible. You can just use this discussion as a datapoint to reassess your view of my past disposition
ez4u wrote:Wow! With that kind of flexibility on display I am worried you might be outgrowing L19.
macelee wrote:Remi, can you please check why a rather strong player Lee Yeongkyu is missing from your list? He has 454 games in Go4Go database.
macelee wrote:OK. He might be in his mandatory service in the army as many have to do.
12.26 논산훈련소 입소 - >공익근무요원으로 복무
macelee wrote:I think strong players are very unlikely to just go away and stop playing. They return sooner or later. Maybe it is sensible to just keep them in the main list but noting the date of his last available game.
ez4u wrote:macelee wrote:I think strong players are very unlikely to just go away and stop playing. They return sooner or later. Maybe it is sensible to just keep them in the main list but noting the date of his last available game.
Of course strong players (and weak players) routinely go away and stop playing. It is called getting old () and happens far more often than players stopping and then coming back. An 'active' list makes sense to me. The Chinese pro rating list operates that way although I have no idea what parameters are used.
macelee wrote:Hi Rémi, I wonder if you are able to conduct an experiment using your algorithm.
Now Iyama Yuta is in red-hot form, winning all his games over the past three months. This put him at No. 5 on your list (in fact he temporarily went to No. 4 above Shi Yue two days ago). I wonder how reliable your algorithm reflects his real strength. After all his games are mostly against opponents significantly weaker than him. And each year he only plays very few games against strong Korean and Chinese players.
My data does not support Iyama being at top 5. His score against the remaining 19 players in top 20 is a pathetic 12-21 (36.3%). It is also quite surprising that he never played any games again 6 of the top 20 players.
I believe your rating list quite realistically reflects the relative strength among Korean and Chinese players. They so frequently play each other, not just during international events, but also the Chinese league. With large sample size, the dynamics of your algorithm should work really well. But because there are much fewer games connecting Japanese players with the rest, the Japanese ratings are harder to justify.
I propose you run the following experiment. Create a number of (say 50 or 100) fictional games between top 10 Japanese players (not including Iyama) and Korean/Chinese opponents of similar ratings. Randomly generate the outcome. The purpose of this is to make more links between Japanese players and the rest. Then recalculate everything to see if this has any impact on Iyama's rating.