Posts about “Uncategorized”

After the New York Times announced its metered paywall last week there has been a lot of empty blather. Standing out from all the noise are two very good analyses. The first was by Felix Salmon for Reuters, analyzing a consumers decision of whether or not to pay. The second one was by Jonathan Stray on Nieman Lab, showing the effect of several different variables on revenue.

This stuff is right up my alley, and I’m currently working on a senior thesis in the field and so I’ll try to extend Salmon’s analysis a little bit. Later on, I’ll take on Stray’s model as well.

Salmon’s Analysis

Let’s say a reader in a given period reads N articles from the New York Times. Then suppose the New York Times sets the paywall after a consumer has read some n<N articles. In order to read the n+1th article, the reader must pay a fee of F. If v is the value the reader gets from each article, then he will only pay the fee if v\left (N-n  \right ) > F. This is a good simple model synopsis.

Article Values are Different

Let n,N,F be as before. The first issue that jumps out is that the value of any given article is not constant. The value of articles over a period varies, so let’s arrange them in order of value from highest to lowest.

Let \{v_i\}_{i=1..\infty} be a monotonically decreasing sequence of article values for our reader, with v_i = 1 \:\forall\: i>N. Then the reader gets value,

u(v)=\left\{\begin{matrix}\left (\sum_{i=1}^{N}{v_i}  \right ) - F &if\;\sum_{i=n+1}^{N}{v_i} > F\\ \sum_{i=1}^{n}{v_i} &if\; \sum_{i=n+1}^{N}{v_i} \leq F \end{matrix}\right.

The reader would clearly choose to read the articles he values most first, and after that only pay the subscription if the rest of the articles he has yet to read are still valuable enough. Only if \sum_{i=n}^{N}{v_i} > F will the reader pay the fee.

But this is not quite right either. There’s no way for a reader to know ahead of time which articles are most valuable to him.

Predicting future value

Now, instead of ordering the values of articles from highest to lowest, let’s say that the value of articles our reader reads are drawn independently from a probability distribution. Let the value of articles be a random variable V \sim N\left ( \mu,\: \sigma^2 \right ) with a normal distribution and \mu_x the average value of an article. V_1, V_2, V_3,\cdots are the value of the first article read, second article read, etc.

Let the period of time for which the reader pays be represented as \left [ 0,1 \right ], and the moment when the reader has read n free articles and must choose whether or not to pay the fee be at time t\in \left [ 0,1 \right ]. Assume the reader reads articles at some constant rate r throughout the entire period. Then t= \frac{n}{r}.

Now the reader must predict what the value of articles he will read will be to determine whether or not he should pay the fee. Up to point t, he has gotten value \sum_{i=1}^{n}{V_i} and average value per article of \overline{V}= \frac{\sum_{i=1}^{n}{V_i}}{n}. \overline{V} is also the sample mean of the distribution.

Result

Our reader will choose to pay the fee if \left ( 1-t \right ) r \frac{\sum_{i=1}^{n}{V_i}}{n} > F. As r goes up, so does F and as n goes up, F goes down.

There are some interesting suggestions from this. When the New York Times imposes the paywall, they should carefully monitor the rate at which people read its articles. Those that have a low rate would be ideally suited for targeted discounts. Also, since readers make their predictions based on past articles they’ve read, the ideal time to convert non-paying readers is right after a reader reads a series of good articles. If the Times can be subtle about dialing up and down n, then they can exploit variance in article value to increase sales.

Further work

This analysis is of course still incomplete. Problems I still see with it.

  • Knowing that you’ll only get a limited amount of articles for free will change a reader’s behavior. If they’re still uncertain about whether or not paying the fee will be worth it, they will more carefully pick which articles they read before time t. This will bias \overline{V} upwards, but push r downwards. At time t, there will also be a back-log of articles that would have been read but weren’t influencing the decision of whether to pay F or not.
  • How will the reader decide whether or not to read an article before time t? He’ll have to depend on the headline and a summary if available to make a prediction. Before actually reading the article, the reader will predict some value V_{i}' and after reading the article realize some value V_i. This average spread \frac{\sum_{i=1}^{m}{V_i-V_{i}'}}{m} will likely affect predictions of future value.
  • As is, the model says decreasing n and increasing F leaves the reader’s decision of whether to buy unchanged. But as n\rightarrow 0 this becomes a strict paywall, which the gut says people would be less willing to pay for. Another factor in the reader’s decision of whether or not to pay is their confidence about their decision. The larger n is the more confident they will be about their value prediction since the sample mean’s standard deviation will fall, as \overline{V} \sim N\left ( \mu,\: \frac{\sigma^2}{n} \right ).
  • Paywalls, as described by the New York Times and as currently implemented by the Financial Times and WSJ, are easily bypassed. This can be done either by spoofing the referrer header, or by clearing cookies. This avoidance could also be modeled in in some way.
  • Letting people in for free if they come via social media or links from other sites screws everything up. I think this may turn out to be such a huge gaping hole in the paywall that they severely restrict it, but if they don’t there are several ways it can be modeled.
    You could divide articles between different distributions of those that are primarily found through social media and those that aren’t. The reader would choose whether or not to pay based on the value of those that aren’t. Alternately, an article’s ability to be found through social media could just affect its V_i.
  • Print subscribers get free access as well. In Salmon’s post he looks at P-F, the difference between print subscriber’s fee and online subscribers. If this is less than the value of getting the print paper then the reader will choose the print subscription.
  • What if users can choose between a short period, and a longer period with a discount? What does the renewal decision look like?

There are undoubtedly more things that can be done with this model. One of the most obvious is to try and figure out what n and F should be set to.

Finding good values for F and n

Since it’s reader’s will not have the same distribution for V it would be theoretically ideal to pick values for n and F individually for every reader. Realistically, the New York Times probably shouldn’t be that opaque about their pricing as it would cause confusion and a negative reaction among readers.

If forced to pick a single price, it would be necessary to find the average value of articles for all readers. That’s what Stray did with his paywall simulation. However, part of the reason that simulation has such wild swings in revenue from relatively small changes is because many of the variables are dependent on each other. For example, the percentage of people who pay for a subscription does not stay constant when n or F change.

I’ll tackle this issue more in my next post.

Special Bonus! A pricing algorithm for the FT

This part might still be a bit half baked, but working backwards from the consumer’s decision, it seems possible to figure out a demand curve for each individual piece of content if enough data is available. Since the Financial Times already has a metered subscription plan, if they’ve been good about collecting user data they should have what’s necessary to do this. Here’s an outline of the method.

It requires some change of notation from the above.

Let a_i \in A \;\forall i\in\mathbb{N} be an article, and x_i \in X \;\forall i\in\mathbb{N} be a reader. We will now represent the value of an article to a reader as a mapping V: A\times X \mapsto \mathbb{R} with V(a_i,x_i) representing to the value of article a_i to reader x_i. The functions F(x_i) and r(x_i) replace F and r as the fee and rate for reader x_i. n is as before.

Define the set R(x_i) such that a_i \in R(x_i) \textsl{ iff } x_i reads a_i before deciding whether or not to buy.

So our former equation \left ( 1-t \right ) r \frac{\sum_{i=1}^{n}{V_i}}{n} > F becomes \left ( r(x_i)-n \right ) \frac{\sum_{a_i \in R(x_i)}{V(a_i,x_i)}}{n} > F(x_i).

Rearranging, we get \frac{\sum_{a_i \in R(x_i)}{V(a_i,x_i)}}{n} > \frac{F(x_i)}{r(x_i)-n}.

The left side of the above equation is the average value of an article that a reader reads before making the buying decision. So if x_i does buy a subscription, we then know that the average value was at least the right side.

Now that we have an estimate of a given readers average value for content we want to estimate that value across all readers. For any given piece of content, some fixed a_i, to determine its value we sum the average value for content of all readers who read a_i before purchasing, and then divide by the total number of readers (who aren’t already subscribers) who’ve read a_i.

Define, \overline{V(x_i)}=\begin{Bmatrix}\frac{F(x_i)}{r(x_i)-n} &,\:if\: \frac{\sum_{a_i \in R(x_i)}{V(a_i,x_i)}}{n} > \frac{F(x_i)}{r(x_i)-n}\\ 0 &,\:if\: \frac{\sum_{a_i \in R(x_i)}{V(a_i,x_i)}}{n} \leq \frac{F(x_i)}{r(x_i)-n}\end{Bmatrix}.

Equivalently, \overline{V(x_i)}=\begin{Bmatrix}\frac{F(x_i)}{r(x_i)-n} &,\;\text{if x buys}\\ 0 &,\;\text{if x does not buy}\end{Bmatrix}.

This function \overline{V(x_i)} is an estimator of the average x_i has for an article.

Now define the set S(a_i) such that x_i \in S(a_i) \textsl{ iff } x_i reads a_i before deciding whether or not to buy a subscription. This set is all non-subscribing readers that read article a_i in the current period, whether or not they’ve ultimately paid for a subscription by the end of the period or not.

If we take \overline{V(x_i)} for each x_i in the set S(a_i), we have a distribution of estimated values for article a_i. That might look something like this.

Article values

Finally, to come up with a set value for a specific piece of content, we sum over the entire set and divide by the number of readers.

P(a_i)= \frac{\sum_{x_i \in S(a_i)}{\overline{V(x_i)}}}{\left | S(a_i) \right |}

With this value, you can now derive a demand curve for the entire site. Or you can dynamically set prices based on what articles a reader has viewed before hitting the paywall.

Exciting stuff, if actually implemented.

If you think I’ve screwed up the math in some way, or if anything isn’t clear, please please let me know. The thoughts in this post are still very much a work in progress.


Hope everyone has had a good holiday! Did you buy gifts for people? Or receive them? From a pure economic efficiency perspective you shouldn’t spend a second on holiday shopping and just give those around you cold hard cash. After all, lump sum transfers are most efficient in redistributing wealth, and there’s no way you could know a recipients preferences better than they do. (Exceptions for parents who’ve received letters to Santa of course)

Unfortunately this is empirically very unpopular (in the US at least). As Greg Mankiw explains, it’s about signaling.
Social interactions aren’t just about exchanges of economic value, they’re an intricate dance of signaling to others, posturing to others, projecting an image, fitting in with the cool crowd, and all manner of things a high-schooler would be embarrassed to admit to.

The content we consume becomes part of that intricate social game of posturing and positioning that we all play to navigate our social spheres. And luckily for content publishers, this all can be exploited.

Social Content

2009 may be remembered as the year that Facebook and Twitter topped the search engines in sites’ referrer logs. Increasingly, people are turning back to their friends and acquaintances to point them to accurate information, interesting news and entertainment. Search has become the victim of spam and gaming of algorithms, leading to online social spaces becoming a more reliable way of finding what is good online. Fred Wilson gives a clear summary.

For me, social has become the definitive content discovery mechanism. As this happens, content begins to look less and less like a commodity. In search engine land, content is ruthlessly and algorithmically ranked and rated in value and relevance. No one has a personal relationship with a search engine.

Information with social context becomes part of our relationships with other people. And no one is better at persuading us to do things we might otherwise not do than our friends.

For more evidence that social interactions destroy rational economic thinking, one need look no further than luxury goods that people consume and enjoy more simply because they are expensive and can signal to others that they are of high status. Demand for these goods actually rises as they become more expensive. Or take the vicissitudes of fashion, which require people to swap out their wardrobes on a continuous basis in order to convey their social status to others.

Applications

How to tap into this economic irrationality? Get people to consume goods in a social space that displays their consumption to others. People do this on the subway by holding open the covers of their magazine or book. People do it online by sharing links to their favorite sources and stories.

More specifically. Publishers could erect a paywall on a site that takes advantage of these social tendencies by giving paying subscribers the ability to share content by whisking their friends and followers past the paywall. With customized links, or a custom link shortening tool that meters the number who use the link it would be possible to set up multiple tiers of sharing and charge more to let someone share with more people.

This also lets people band together and buy subscriptions. It sounds bad for the bottom line, but in the economic literature, its been shown that allowing this kind of sharing, can actually improve profits for a content distributor. What causes this counter intuitive result? In a paper by Bakos, Brynjolfsson and Lichtman, they explain that this kind of social sharing works to aggregate widely distributed consumer valuations for content and present a more favorably shaped demand curve to the producer.

Content producers continue to struggle with monetizing their products online, and it looks increasingly unlikely that advertising will be the solution because content sites operate at the level of “intent generation” not “intent harvesting”. Perhaps by making the consumption of content more of a social experience, producers will have more success.




Bill Clinton is coming to Penn to speak today.

The Secret Service instructed us, The DP to bring our cameras down to Irvine Auditorium at 7AM to be inspected. Our video camera is sitting right next to one from NBC.


Last year, Kevin Burke put together a list of blogs by Penn students/faculty/staff/alums/etc. It was a great resource, but it’s about due for an update.

This list isn’t in any order whatsover, but I will try and divide it up between active and inactive ones.

    Active

  • Martin Gordon’s Blog – Kevin had him pegged as a senior from Miami Beach last year, so I guess he’s an alum now?
  • 3000 Miles of Virtual Insanity – Ravi Mishra’s blog about being between Silicon Valley and Penn.
  • Progressive Dispatches – a blog by student government member Brett Thalmann about politics mostly.
  • The Un-Wharton – Stuart Stein, a Wharton senior studying marketing and management blogs here
  • Akkam’s Razor – Staff/Master’s student. one of the most active blogs on the list, he posts nearly every day.
  • Jeff Weintraub – a political science professor’s blog on politics and current events
  • {metadatta} – a blog by Physics student Sujit Datta about ‘academia, science, or just life in Philadelphia’
  • The Spin – the DP’s blog about student life and etc. it’s a group blog with different writers each semester
  • The Buzz – a blog by the sports editors of the DP, about Penn sports teams
  • DP Photo Department – a blog by the DP photo department about all things photography related
  • Scents – Daniel Drucker, a graduate psych student’s blog
  • Oikono – a blog by Wharton student Geoffrey (Kok Heng) about economics, poverty, international issues
  • Nat Turner – Wharton student/entrepreneur’s blog. Has a company in philly called Invite Media. intriguing.
  • Earning My Turns – Computer Science Professor and skiing fan Fernando Pereira’s blog. He was my professor for CIS120 last semester and showed a picture from one of his skiing trips every day.
  • Werblog – Legal studies professor and ‘internet expert’ Kevin Werbach
  • Language Log – very popular language blog, hosted out of a computer in the linguistics department by Mark Liberman. (he taught LING001 last semester I think) Professors from a whole bunch of different schools contribute
  • Mr. Swyx – a blog by Huntsman student Shawn Wang
  • The Appletonian – Justin Sykes, Wharton senior. He’s from Appleton, Wisconsin, which I guess explains the title.
  • Penn Press Log – blog about books published by the Penn Press
  • MBA Admissions Blog – about the Wharton MBA admissions process
  • Dept of Anesthesiology – a blog from Penn Med’s Department of Anesthesiology & Critical Care
  • Vitale Digital Media Lab – A blog with information about this digital media lab in Van Pelt. It’s actually a pretty cool place and they have video cameras and AV equipment they lend for free.
  • colour my world! – a blog by a Penn student who will be doing banking in Hong Kong this summer
  • all that glitters – a tumblr blog by Jessica Gold Haralson, who started Quake, a SAC funded erotica magazine.
  • ohbadiah – Nick McAvoy’s blog, he used to write on The Spin
  • Leighcia – . former Penn student who has apparently decided financial consultant was not the right way to go
  • of course I Had a Surprise Birthday Party – Kevin Burke’s blog
  • Nathan Ensmenger – blog from the undergraduate chair of the Science, Technology & Society major.
  • Dueling Tampons – blog by a Penn alum, about other Penn alums and students
  • Critical Mass – a blog by English professor Erin O’Connor about academia
  • A Beautiful Mess – Engineering student John Tran’s personal blog.
  • the iv-tini chronicles – Penn senior named Dan, originally from Wisconsin, who will be off to med school next year.
  • meta.jane – a rather literary blog by assume I’m pretty sure is a Penn student
  • Affabillyty – a blog with a lot of good music, by Billy ___, a sociology major.
  • I Am Malek – Malek H. Lewis’s blog. Topics for the future include San Francisco, High School Musical, and Gay Videogaming. Purple text on a gray background.
  • Blog blah blahg – just a ‘gay boy wading in the murky dating pool of Philadelphia.’
  • starlighterx – blog by a Penn student who stresses over midterms and likes to comment on New York Times columnists
    Inactive – These were on Kevin’s original list but haven’t been updated in a long time

  • curiousgirl’s playground – a blog by Jing Chen, M&T Class of ‘07. It’s on hiatus right now, the last post was in November.
  • Cool New Web – a blog by Anton Bernstein. Last update was in November.

Wow there are a lot more than I was expecting to find, and I’m sure there are a lot more that I didn’t come across. If you know of any more, please send them along to me.


Yes We Can – Barack Obama Music Video by Will.i.am
[youtube=http://www.youtube.com/watch?v=jjXyqcx-mYY&rel=1]

Thanks to Lawrence Lessig.


If you’ve seen the movie Blood Diamond, there’s probably one phrase that you remember clearly like I do. “T.I.A., This is Africa,” is what Leonardo DiCaprio’s mercenary character says as the situation around him rapidly disintegrates into civil war. TIA. This is Africa. Of course it’s fucked up, you can’t expect it to be like the rest of the world, is what he means.

It seems like a week doesn’t go by without some new violence making headlines in Africa, or some old violence making headlines again since it never went away even though we all stopped paying attention. Today,rebels in Chad, before Kenyan election violence, genocide in Darfur, there’s still fighting in the Congo, Somalia has never really improved. Oh and don’t forget AIDS, oil, and diamonds! All I can even fathom doing on reading another headline about violence in Africa is shake my head and think, T.I.A.

I can’t keep it all straight! Try as I might there are too many conflicts, too many ethnic groups, too many underlying issues to make even coming close to understanding the problems a daunting task.

What I’m really asking for is someone to put together a nice summary map of conflicts in Africa, so I can figure out exactly which countries are stable at all, or else I’m just going to operate on the assumption that none of them are.

Maybe I’ll go buy a ‘Save Darfur’ t-shirt.


Doesn't make me confident about it being up on super tuesday.


A boy plays basketball after school with the Police Athletic League.The newspaper I work for, dailypennsylvanian.com has moved more and more into shooting video, but one thorny issue keeps coming up, and that’s. People always seem at least a little leery about being interviewed or being on video camera, even if they have no qualms about talking to a reporter who is taking notes, or having their picture taken by a photographer. But bring up the topic of video, and it’s a whole other story, both for the subjects and for leery PR people.

Take as an example, this feature article written by Mara Wishingrad about the Police Athletic League, an after school program for kids in West Philadelphia. I was the photographer/hopeful videographer for the story, and together we were driven down to the Alexander Wilson School by a very cooperative Penn Police.

It’s a great scene there. It’s a big gym with kids of all ages playing basketball together or sitting and talking on the side, with a very friendly police officer named Cassandra Parks-DeVaughn watching over all of them. She has a great rapport with the kids, they all call her “Miss Cassandra” and this is the kind of heart warming story that the Penn Police loves to see us writing. And it is a good story that could make for a great video. Combine some shots of the kids playing basketball, with an interview with Officer , and some of the little kids. It’s a great angle to tell the story from, and personally, I think it works much better in video than it does in print.

“Miss Cassandra” is okay with it, the kids would love it, but as I set up the equipment the PR person from Penn Police who’s with us, goes and makes a phone call to ask about video and comes down and tells me that I’m only allowed to shoot still photos, and no video. The reason she gives is that they’re unsure if the kids have permission to appear in video.

Courts have held that the first amendment right of reporters to interview, photograph, record and otherwise do journalism in public without consent forms of any kind. A cursory search I did didn’t turn up any sort of legal distinction between video and photo, so while I’m not a legal expert it seems that if we had the right to photograph them, we would also have had the right to record them. Unfortunately, even if there is no legal distinction, there is a strong distinction in people’s minds.

I guess online video is just too new of a medium and PR departments automatically consider it a threat. But here, everybody lost out on the chance for a great story.


  • Chaucer, but better
    Chacuer is much more interesting when translated into modern slang.
  • ScoobyTube
    Like YouTube but Scooby!
  • The Cha-Cha Slide versus the Electric Slide
    I get these two really confused and for the longest time I thought the Cha-Cha Slide was the Electric Slide.
  • Clark and Michael
    I just watched both Superbad and Juno in close succession. Michael Cera can only play one role, but he does a damn good job of it.

Really interesting post from Wild About Math about how the designers of the early telephone system picked long distance area codes. Turns out it has to do with speed of dialing on a rotary phone.

North American telephone area codes seem to have been chosen at random. But there was a method to their selection. In the mid-1950s when direct dialing of long-distance calls first became possible, it made sense to assign area codes that took the shortest time to dial to the larger cities. Almost all calls were from rotary dials. Area codes such as 212, 213, 312, and 313 took very little time for the dial to return to its starting position compared, for example, to numbers such as 809, 908, 709. The quickest-to-dial area codes were assigned to the places expected to receive the most direct-dialed calls. New York City got 212, Chicago 312, Los Angeles 213, and Washington, D.C., 202, which is a little longer to dial than 212, but much shorter than others. In order of decreasing size and estimated amount of telephone traffic, the numbers grew larger: San Francisco go 415, Miami 305, and so on. At the other end of the spectrum came places like Hawaii (the last state annexed in 1959) with 808, Puerto Rico with 809, and Newfoundland with 709…link

An interesting thought exercise would be to do reassign long distance area codes based on new estimates of telephone traffic and speed of dialing on touch tone phones.


When I’m browsing, I have at minimum four tabs open. One for my calendar 30Boxes, one for GMail, one for my RSS aggreggator, and one for whichever page I’m currently viewing. That’s the minimum. Usually there will be a lot more than one page I’m currently viewing, Usually my browser has three or four different windows open with about a half dozen tabs open in each. Each window is a different topic. As I read a page, I open every link that looks interesting in a new tab. And then tab through things casually as I read, going from one interesting bit to another. I always have my music player open in the background, playing music that I happen to like a lot, and occasionally I’ll have an instant messenger program, or an IRC chat window open too. BitTorrent is likely running, and I’ll check on that every so often to see the status of my downloads.

In that environment, when a page opens up and starts blaring music or noise that I’m not expecting, I get annoyed. Heck, when I open up a video I am expecting, I get annoyed at having to turn off my music.

With text, it’s easy to start and stop reading and pick up where I was before if I get distracted by an incoming e-mail or IM or update or phone call or my roommate yelling about something or the fire alarm going off or whatever.

With video, that doesn’t work. That intro anthem cuts over my music, forcing me to turn it off. And then some ad starts playing and I’m forced to listen to some obnoxious ad voice drone on about something I’m not interested in buying. By now, I’m already on a different tab, quietly fuming. (Non video ads that are placed alongside the video would be better, ads placed in the middle of a video would be even more infuriating, but stand a better chance of getting the video watched)

When I get back to the video, I don’t have the choice of skimming it for the short version, or even doing something else while it gets to the interesting part, because on another tab I can’t see the video to know when it gets to the interesting part. A lot of the time, I’m just going to decide this isn’t worth it and close the video, unless it’s something really interesting to me, or it grabs my attention in the first three seconds or so.

The difference between video and text online is that video demands the viewers undivided attention in a way that text doesn’t. I don’t always have that attention.



This coming presidential election will be the first I get to vote in. I missed in 2006 by just five days. That year, youth voter turnout set a 20 year high of 24% turnout. Still dismally low, though, especially considering how little time it takes to vote. But for 2008, and in what plenty of pundits have been calling “the most important election of our time.” (Opposing viewpoint, every election is the most important election of our generation)

The big story of the Iowa caucus has been voter turnout. 239,000 Democrats turned out to caucus, compared to 2004’s 124,000. While total turnout doubled, turnout growth in the demographic that drove Obama to his win, the under 30 set, was even higher.

The youth turnout rate went from 4% in 2004, to 13% yesterday, a total of 65,230. Caucusing takes several hours of standing and moving around a room, which is why turnout for a caucus is always lower than for a normal election.

And in a sign that this still mostly tuned out demographic commands serious political power, young voters supported both Obama and Huckabee by the largest margins, with 57% of young caucus goers supporting Obama.

I thought I had had it figured out. Young people didn’t vote because they were disgusted with the political process, and when prompted with all bad choices, chose to tune out. But if a candidate can come up with a message promising change, and can do it with the charisma to command attention, kids might tune back in. Is Obama that candidate?

There’s still a long election season ahead, and the final answer won’t come until November 2008.


Are orange and light blue. With hotels on each, the average expected number of opponent rolls to recoup your initial investment, assuming the properties are bought at face value is ~17 and ~14.5 respectively.

Ridiculously awesome statistics for the monopoly power gamer within here.


Apparently not. Since Pakistan fits exactly that profile and is a major US ally.

NYTimes on Musharraf’s power grab.


“If I were president, I would flat shut down any imports from China.” During the Philadelphia Democratic primary debate.

Guess who I just lost all respect for because that is just flat out crazy.


Slate has a bit up about how no one visits the candidates Facebook pages.

The answer obviously, is no. Without even seeing the Facebook page for any candidate I can say that it is most likely flat, boring PR shtick. Exactly what Facebook was meant not to be. If someone wants to find out about a candidates positions on issues, their official web page would do a much better job. What Facebook does well is two way interaction, and no is delusional enough to believe that writing on Barack Obama’s wall might actually get you a response from Barack Obama, and not some pimply intern.

What Facebook can do well is spread videos and news. Look at Vote Different or Obama girl, or the Jena Six. But these things spread in a more or less uncontrolled manner. What matters on Facebook is not so much the candidate to voter relationship, as the voter to voter relationships where candidates are discussed.

But I think this is probably obvious to most of us who actually use Facebook as Facebook and not as a marketing tool. For those using it as a marketing tool, well, now you’ve got a study to tell you that.


Who’s pre-ordered the new Radiohead album In Rainbows?

How much did you choose to pay?

Radiohead is pretty freakin awesome, and so this may be the first album I buy. Ever.


Thomas Friedman has a nice piece over on NYTimes.com called 9/11 Is Over about how we need to move past 9/11 in our politics, since our reaction to 9/11 has been overwhelmingly horrible.

My reaction? Duh. And I’m pretty sure that’s the reaction of most others I know. Maybe reality has finally set in for the Washington pundit set? But remember, these are the people who also all supported the Iraq war in 2003, when most other young college/high-school age kids were apathetically against it. I write apathetically against it, because while we were opposed to it, most of us couldn’t be bothered to do anymore about it than join a Facebook group. Anyways, Slate Magazine put together a handy chart as a guide to positions on Iraq then and now for major politicans and pundits which is quite handy. The Iraq Position Locator is quite handy. Friedman isn’t on it, but for your reference, he was pro war in 2003.


The New York Times blog The Lede reports today that bloggers in Myanmar are having trouble accessing the internet to post their reports on the governments crackdown on protestors.

Just another sad reminder that Internet censorship is becoming more and more prevalent, and for the most part, no one is doing anything about it. If there were ever a premiere issue that people who care about the Internet need to care about, it’s censorship. Whether of porn, unpopular political beliefs, hate speech, gambling sites, any censorship of the internet is harmful, and makes it so much easier for censorship of the internet to be used as a highly effective method of control by a repressive government. The Atlantic put together a helpful map to Internet censorship around the world last May. While some of the information has changed, the map is still a very useful reference point.

Click here for the accompanying article, or here to go straight to the map(PDF).


I just tried to watch a recording of yesterday’s Senate Finance Committee hearing on Hedge Fund returns and University Endowments. Guess what? The recording is in .ram format and will only play with Real Player. Just great, I’m not going to install Real Player just to watch this, so forget it.

But step back, why should the Senate Finance Committee rely on proprietary software that depends on a corporation’s support to run, to disseminate public information? Public information should be released in open formats that can be guaranteed to run across all systems. And why, essentially is RealNetworks the beneficiary of the Senate’s corporate welfare? It would be absurd on face if congress were to pass a bill forcing thousands of people to use Real Player, or pass a bill to give RealNetworks customers, yet, that’s essentially what their website is doing, when a proprietary Real Media format is the only format that public proceedings are released in.

I guess it’s to be expected, their website is ass ugly, and contains this wonderful little tidbit.

This site is optimized for Netscape Navigator 4.x or Internet Explorer 4.x, with an 800×600 screen resolution.


Releasing on bittorrent is the fastest way to get a new movie to the widest possible audience and generate the buzz and attention needed to move to a mass market release. Any lost profits from releasing it on bittorrent at the beginning are negligible for two reasons.

  • As soon as a movie becomes popular and profitable, a copy is going to hit bittorrent anyways, whether the movie creator wants it to or not.
  • The people who would seek out a nearly unknown independent film on bittorrent are the ones who will become that films fan base as it moves to a mass release. They’ll want the experience of seeing it in a theater with others and want to own the DVD with the director’s comments, extras, and outtakes.
  • The old model is outdated. The current promotional model depends on taking the film on a limited release to film festivals and screening city by city trying to generate positive reviews. Reviews by critics just don’t matter as much as they used to now, you need to get eyeballs on the film. The average moviegoer now can sit through maybe half a review before getting bored. Most word of mouth about a movie breaks down to, “Yea it was good, go see it,” or “No, it wasn’t worth it, don’t bother.”

Darkon is an independent documentary about a group of LARPers trying to escape feeling disempowered in real life. The movie has been completed for over a year now, and it’s been on my “to watch” list for at least six months. Granted, I’m really bad at getting any of my “To X” lists done, but six months is excessive for a movie.My Movies to Watch List

The fact that I haven’t managed to get Darkon crossed off yet has nothing to do with me being bad at lists, it’s that the movie has been in such a limited release, bouncing around from screening to screening to film festival, never in more than one place at a time, that I haven’t come within a hundred miles of a showing yet. This seems to be a pretty standard way of promoting small independent films. Tour the country from city to city, and visit a few art and film festivals to preview the film to select audiences trying to build the buzz and demand for a mass market release. But this leaves a lot of people out.

Not everyone can make the commitment to go to a film festival, or lives in a city where a film festival or advance screenings of independent films exist. For example, me. Between my travel schedule, and Darkon’s travel schedule, I am not going to get to see this movie. And I’m sure there are other people left in this lurch. From what I’ve seen, the movie looks really good. (The trailer looks good, the music is amazing).

And beyond just my own personal whining about not getting to see Darkon, this way of promoting movies just doesn’t seem very effective either. It takes too long. I don’t have the time to continually check to see if Darkon will be showing in Philadelphia. I could very well forget, and miss it entirely. Not enough eyeballs on the film. This is critical. Film critics just don’t matter as much anymore. People want to see and judge for themselves.

So get to it! Film festivals are great, but if a movie wants to make it to the big times, it needs to be seen by as many people as possible.


Friday, Sept. 21, 2007

9PM: Read the XKCD Forum. Meetup is this weekend in Cambridge? How did I forget! Gotta be there.

10PM: “Yo Alex, you read XKCD? Meetup? Can I crash for a night? Sweet.”

11PM: Look at bus tickets. Hmmm…. I have a lot of homework this weekend…

12PM: Start homework. Set alarm clock for early, just in case.

1AM: Ugh….. Friggin Java compiler is broken.

2AM: Forget it, I’m going to sleep.

Saturday

10AM: Wake up early. Yea, this is early for me. Time to make a final decision, do I go or do I stay?

11AM: Buying bus tickets. Click, click, click. Hmm… I need food too. Pour Honey Bunches of Oats into a zip lock bag.

12PM: Out the door! A journey of a three hundred miles starts with a single step. But then there’s a lot of sitting if you want to get there in any kind of time. The subway takes me to Chinatown, and I get on a bus headed for New York.

1PM: Doing probability homework on the bus. The best seats are the ones in the very last row. True, you’re right next to the bathroom, but that middle seat is almost never taken, so you have extra room if you’re in the window seat. And if you’re in the aisle seat you can stretch your legs out.

2PM: Get to New York. Wander around lost for a bit. I really don’t know my way around this city very well, and the street signs aren’t labeled with the cardinal directions like they are in Philly. There’s nice 3G coverage for my cell phone though, so I get on Google Maps Mobile and find my way. Stop at a little bakery and get some food too.

3PM: On the bus to Boston! More homework, blah.

7PM: Boston!

8PM: Harvard Square for dinner. It’s great to be with people who I haven’t seen for so long, but it feels like no time has passed at all. We stayed in the restaurant after finishing up our food, even long after the wait staff started giving us significant, “we’re trying to close up and clean, so hurry up and leave” looks.

11PM: Turn in for the night at MIT’s Theta Xi house on the Boston side of the river.

Sunday

9AM: An early morning, I never seem to sleep right the first night away from a familiar bed, but a lazy morning. Pick up Hitchhiker’s Guide off the bookshelf and read a bit. Play some Guitar Hero. I’m really bad at Guitar Hero.

12PM: Get some lunch, and then walk across the river to the Cambridge side. No rush, no rush.

2PM: In Harvard Square again, getting ready to Davis as 2:38, and the XKCD meetup draws near. At 2:38 hundreds of geeks are supposed to show up at a park in Davis.

2:23PM: Getting off the subway at Davis. Wow… a lot of people are getting off at this stop, and all heading in the same direction. And I see a lot of dorky T-shirts and tech company logos…

2:30PM: Yep, everyone’s headed the same place, and this little park is packed. So many nerdy people….. I don’t think I’ve ever seen this many nerdy people in one place before.

2:38PM: Cheering!

2:39PM: Randall shows up! Someone yells something about “the messiah.” lol

2:40PM: Draw an alternate ending on a giant sized version of the comic. Haha, the forum moderators are moderating in red ink.

2:45PM: Now what? People are getting signatures from Randall, (one girl got her boobs signed…), I see people dueling with fake swords, spot someone wearing chainmail, someone has a snake around their neck, someone’s dancing to some very funky beats in a suit with a raptor head, four or five tape measures are being extended upwards, someone’s marching around with a “Citation Needed” sign and nearly every shirt has a witty science joke, math equations, or the letters MIT displayed. Fun!

3:45PM: I leave. Would be great to stay longer, but if I want to get back to Philadelphia at a half decent hour, I can’t. So it’s back to South Station to catch the 4:30 bus.

9PM: In New York City. Get back on the bus to Philly.

12PM: Back to the dorm room.

1AM: Start homework. Again.