The r/Bitcoin sub-Reddit is a far better community when Bitcoin trades flat than when it’s volatile.
So many great discussions around Bitcoin, the technology behind it and the future during flat and non-volatile periods. Whenever Bitcoin is jumping huge amounts the sub-Reddit quality of posts go to 100% meme page. It’s probably due to the influx of people that get excited around price. Most of those people have nothing to talk about without moon memes. So the quality posts come up when it’s boring. When Bitcoin trades flat is when I learn the most! Edit: I definitely enjoy the sub-Reddit during both periods. Everyone loves some Bitcoin memes every now and then!
03-14 03:45 - 'I'm just an investor...new to reddit to spread my work. I'm surprised ...there are almost no investors here. ...I can show you how binary trade works with bitcoin ..send me a message .if interested' by /u/robert_richard removed from /r/Bitcoin within 20-30min
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07-01 17:23 - 'Hey any reddit user in la looking to sell bitcoin for cash or any local miners with large amount of coin to trade for cash' (self.Bitcoin) by /u/Jewbag626 removed from /r/Bitcoin within 40-50min
[OC] Which front offices and agents are the 3 major newsbreakers connected to? I went through 6000+ tweets to find out!
If this sounds somewhat familiar, that's because I did a 2019-2020 version and posted it back in March. In terms of changes from that post:
I've expanded the timeline to tweets from September 27, 2018. This is the first official day where each of Shams, Woj and Haynes were at their own respective companies. Shams moved to the Athletic from Yahoo in August, and Haynes moved from ESPN to Yahoo in September.
I've also expanded the criteria on when a tweet could possibly be linked to an agent
TL;DR Tracked tweetsof Woj, Shams and Haynes from 2018-2020 to see whether any of them report on a certain team or a certain agent's players more than their counterparts.Here is the main graphconcerning a reporter's percentage of tweets per team separated into three periods (2019 season, 2020 offseason, 2020 season). Here is aseparate graphwith the Lakers and Warriors, because Haynes's percentages would skew the first graph. During times like the NBA trade deadline or the lifting of the NBA free-agency moratorium, it’s not uncommon to see Twitter replies to (or Reddit comments about) star reporters reference their performance relative to others. Woj is the preeminent scoop hound, but he is also notorious for writing hit pieces on LeBron (sources say it’s been widely rumoured that the reason for these is that Woj has always been unable to place a reliable source in LeBron’s camp). On the other end of the spectrum, it has been revealed that in exchange for exclusive intel on league memos and Pistons dealings, Woj wrote puff pieces on then-GM Joe Dumars (see above Kevin Draper link). Last summer, Woj was accused of being a Clippers shill on this very discussion board for noticeably driving the Kawhi Leonard free agency conversation towards the team. This is the reason I undertook this project: to see whether some reporters have more sources in certain teams (and certain agencies) than other reporters. First I’ll explain the methodology, then present the data with some initial comments.
To make this manageable on myself, I limited myself to tracking the 3 major national reporters: Shams Charania of the Athletic, Chris Haynes of Yahoo Sports and the aforementioned Adrian Wojnarowski of ESPN.
I didn’t use beat reporters, as most (if not all) of their sources would be concentrated on their local team
Others that I considered but ultimately decided not to track:
Brian Windhorst of ESPN (double-dipping in ESPN)
Zach Lowe of ESPN (I consider him more of an analyst)
Marc Spears of ESPN (harder to sift through Twitter feeds, as he posts a lot more unrelated/non-news-breaking content)
Marc Stein of the New York Times (same as Spears)
Kevin O'Connor of The Ringer (same as Lowe)
The time period I initially tracked for was from January 1, 2020 to the end of the regular season March, but after finding a Twitter scraping tool on GitHub called Twint, I was able to easily retrieve all tweets since September 27, 2018. However, a month ago, Twitter closed their old API endpoints, and Twint ceased to work. I used vicinitas.io but the data loading became more time-consuming. Therefore, the tweets are up to the date of October 15 2020. How I determined information was by manually parsing text tweets by the reporter (no retweets):
This means I did not include images or multimedia appearances such as television, radio or podcasts. The rationale for this is that I simply don’t have the time to listen/watch and record all the instances of providing information through sources on these mediums.
Now, I didn’t take every single text tweet:
I didn’t include direct statements, be they from players or front office folks
I separated them, along with podcast guests in another tab
I didn’t include the summary tweet that Woj & Shams love to do: “Story filed to/Story on [employer]:..” because it doesn’t add anything apart from a link to a story (also, I personally don’t want to be called an ESPN/Yahoo/Athletic shill)
If the tweet added a reporter’s own analysis to someone else’s tweet, it was not included
If it was new information, the tweet was retained
Tweets that related solely to retired players were not included: mainly Haynes reporting Dwyane Wade joining CAA, as well as the unfortunate passing of Kobe Bryant on January 26
I grouped multiple tweets about the same subject delivered around the same time frame (such as trades) into one, as doing otherwise would arbitrarily inflate totals
There’s no hard and fast rule for whether or not to group tweets
For example, the big 4-team trade that created the Pocket Rockets was grouped in full
On the other hand, the Miami-Memphis trade was split up because the full details came like a day later
Sometimes, I used my judgment to determine whether a tweet’s underlying information would have come from a source, and therefore whether I should include that tweet or not
For example, consider the All-Star tweets: Haynes and Shams both posted the All-Star starters, but looking at the time signatures led me to believe that this was simply relaying the information from the TNT reveal
On the other hand, both Shams and Haynes posted tweets disclosing the All-Star Reserves before the TNT reveal
Next, I had to assign possible teams to each tweet:
Items such as changes to the league calendar, the naming of All-Star Reserves and salary cap projections were immediately attached to an NBA source
Injuries and trades were fairly straightforward, assigning these tweets to the participating teams
Items such as league mandated fines/suspensions, invitations to All-Star competitions and game protests were credited to both a general NBA source, as well as the related team(s)
Direct sources from agents or mentions of specific agents were attributed as a catch-all “Agent”
In the former, team was not included: examples include Matisse Thybulle’s agent on not being selected for the Rising Stars Game or Royce O’Neale’s agents confirming his contract extension with the Jazz
In the latter, team was included: examples include two Knicks switching their agent to Rich Paul
New addition: anything related to a player's status with a team were also attributed to agents (qualifying offers, extensions, option decisions, waivers, and contracts/deals)
I then found which agents correspond to which players (big shoutout to realgm.com and the Wayback Machine)
Rumours were slightly more difficult
As we know very well, league sources is an exceedingly vague term
Instead of attempting to pinpoint a rival executive with a motive to make a comment, I took the “Occam’s Razor” approach and assumed that the teams involved had someone talk to the reporter
When it was impossible to even determine a participant team, it was the general “NBA” source to the rescue
Chris Haynes has the highest percentage of tweets relating to the Detroit Pistons in all three periods. He also reports on far more Portland news than Shams or Woj.
Shams' Brooklyn edge is evident. The Athletic was also the outlet that Kevin Durant felt comfortable talking to about his positive coronavirus test. As well, Shams reported on Spencer Dinwiddie's quest to tokenize his contract (similar to bitcoin).
Adrian Wojnarowski has increased his percentage of tweets regarding the LA Clippers period-over-period, but so have the other two reporters.
It's surprising that Dallas's numbers are so low, considering they're a good team with an international superstar.
My hypothesis from my previous post is that Shams and Woj each have capable Mavericks deputies in the Tims (Cato and MacMahon, respectively) and decide to leave that market alone
Shams does have the highest percentage of Mavericks tweets in all three seasons however.
Now, you'll notice that there's two teams missing from the above graph: the Golden State Warriors and the Los Angeles Lakers. Here's the graphs for those two teams. As you can see, they would skew the previous graph far too much. During the 2019 NBA season, 27% of Chris Haynes's qualifying tweets could be possibly linked to the Warriors, and 14% of his qualifying tweets could be possibly linked to the Lakers.
Here's the top 10 agents in terms of number of potential tweets concerning their clients.
Woj has the most tweets directly connected to agents by far. It wasn't uncommon to see "Player X signs deal with Team Y, Agent Z of Agency F tells ESPN." The agents that go to Woj (and some of their top clients):
Mark Bartelstein of Priority Sports (Bradley Beal, Kyle Lowry, Gordon Hayward)
Jeff Schwartz and Sam Goldfeder of Excel Sports (Khris Middleton, Nikola Jokic, CJ McCollum and Kevin Love)
Steven Heumann and Austin Brown of Creative Artists Agency (Andrew Wiggins, Chris Paul, Donovan Mitchell and Zion Williamson)
One thing I found very intriguing: 15/16 of tweets concerning an Aaron Turner client were reported on by Shams. Turner is the head of Verus Basketball, whose clients include Terry Rozier, Victor Oladipo and Kevin Knox. Shams also reported more than 50% of news relating to clients of Sam Permut of Roc Nation. Permut is the current agent of Kyrie Irving, after Irving fired Jeff Wechsler near the beginning of the 2019 offseason. Permut also reps the Morris brothers and Trey Burke. As for Chris Haynes, he doesn't really do much agent news (at least not at the level of Woj and Shams). However, he reported more than 50% of news relating to clients of Aaron Goodwin of Goodwin Sports Management, who reps Damian Lillard and DeMar DeRozan. Here are the top 10 free agents from Forbes, along with their agent and who I predict will be the first/only one to break the news.
Most Likely Reporter
Too close to call, leaning Shams
Too close to call, leaning Shams
Alexander Raskovic, Jason Ranne
Limited data, but part of Wasserman, whose players are predominantly reported on by Woj
Thanks for reading! As always with this type of work, human error is not completely eliminated. If you think a tweet was mistakenly removed, feel free to drop me a line and I’ll try to explain my thought process on that specific tweet! Hope y’all enjoyed the research!
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