Yet another prediction market newbie who should be meeting with Robin Hanson one on one to get a little injection about conditional prediction markets and how they could be useful for BOTH private decision makers AND public policy makers.

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Lewis Sheperd (the Chief Technology Officer of Microsoft’s Institute for Advanced Technology in Governments):

Indeed, it appears to me that [prediction markets] are growing not from corporate or government use, but mostly organically from within academia, stock-futures circles and political-junkie communities. I&#8217-m reading the interesting variety of writers and prediction-marketeers at Midas Oracle, which brings together widely ranging posts from faculty members at Harvard and other universities, daytraders, and even a few “amateurs.”

Lewis Sheperd notes in his post that a number of for-profit companies (like Google and General Electric) are using private prediction markets (a.k.a. enterprise prediction markets). Non-for-profit organizations (like governmental agencies) would do great, too, using the same forecasting tool &#8212-an &#8220-information aggregation mechanism&#8221- (IAM), more exactly.

Robin Hanson, instead of boring us with philosophy, go evangelizing that newbie.

UPDATE: Yes, he is willing to learn. :-D See his comment.

How to run enterprise prediction markets… legally

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Private Prediction Markets and the Law – (PDF file) – by Tom W. Bell – 2008-05-18

Abstract

This paper analyses the legality of private prediction markets under U.S. law, describing both the legal risks they raise and how to manage those risks. As the label &#8220-private&#8221- suggests, such markets offer trading not to the public but rather only to members of a particular firm. The use of private prediction markets has grown in recent years because they can efficiently collect and quantify information that firms find useful in making management decisions. Along with that considerable benefit, however, comes a particularly worrisome cost: the risk that running a private prediction market might violate U.S. state or federal laws. The ends and means of private prediction markets differ materially from those of futures, securities, or gambling markets. Laws written for those latter three institutions nonetheless threaten to limit or even outlaw private prediction markets, as the paper details. The paper also details, however, how certain legal strategies can protect private prediction markets from violating U.S. laws or suffering crushing regulatory burdens. The paper concludes with a legal forecast, describing the likely form of potential CFTC regulations and a strategy designed to ensure the success of private prediction markets under U.S. law.

Conclusion

This paper has described the legal risks facing private prediction markets under U.S. law and how firms that want to runs such markets should respond. To minimize the risk of CFTC regulation, firms should institute mechanisms to ensure that their private prediction markets do not support significant hedging functions and make clear, both in the documentation supporting their markets and in their markets&#8217- structures, that they offer trading not in binary option contracts but rather in conditional negotiable notes. Publicly-traded firms subject to U.S. law can minimize the risks of illegal insider trading by either making public all prices and claims traded on their prediction market or by:
• Keeping trading by traditional insiders separate from trading by others-
• Broadening safeguards against illegal insider trading to cover all traders-
• Treating the market&#8217-s claims and prices as trade secrets- and
• Seeding the market with decoy claims and prices.

Although the skill-based trading emphasized on private prediction markets should in theory remove them from the scope of gambling regulations, a prudent firm could help to ensure that result by:
• Forbidding traders from investing their own funds in the market- and
• Requiring its agents to participate in its market.

As should perhaps go without saying (but as hereby will not), any firm implementing these legal strategies should back them up with ample record-keeping. Each person who trades on a firm&#8217-s market should, for instance, receive clear notification that the market does not deal in CFTC- or SEC-regulated instruments, and that it does not offering services subject to oversight by any state gambling commission. Better yet, traders should be required to access the market only through a click-through agreement in which, among other things, they consent to that stipulation. So go only a few of the provisions that ought to appear in such an agreement- any reasonably competent attorney will think of many worthwhile provisions to add.

Private prediction markets will almost certainly escape the legal uncertainty that now clouds their prospects in the U.S. Even if no legislator, judge, or regulator ever notices them, private prediction markets will come to win de facto legality simply by merit of their widespread use and acceptance. With reflection —perhaps aided by papers such as this one— and practical experience, attorneys will learn how to structure private prediction markets to accommodate the laws that rightfully apply to them and to dodge the effect of laws written for other, materially different markets. There remains some risk, granted, that the CFTC will crush private prediction markets under new regulations. With luck though —and perhaps also with some persuasion— the CFTC will instead allow prediction markets to choose from among several different tiers of regulations. And even in the worse-case scenario, private prediction markets will not disappear- they will simply flee the U.S. for other, freer homes.

The best presentations from the worlds best conference on enterprise prediction markets -ever

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Awesome slides in bold.

Brought to you by Koleman Strumpf (circa November 2007):

Henry Berg, Microsoft &lt-slides&gt-
Discussant: Robin Hanson (George Mason Department of Economics) &lt-slides&gt-

Christina Ann LaComb, GE (The Imagination Market- abstract is free, text is gated) &lt-slides&gt-
Discussant: Marco Ottaviani (Kellogg School of Management, Management and Strategy) &lt-slides&gt-

Dawn Keller, Best Buy (Best Buy’s TAGTRADE Market) &lt-slides&gt-

Bo Cowgill, Google (Putting Crowd Wisdom to Work) &lt-slides&gt-

Jim Lavoie, Co-Founder and CEO, Rite-Solutions &lt-slides&gt-

David Perry, Co-Founder and President, Consensus Point &lt-slides&gt-

Mat Fogarty, Founder and CEO, Xpree Inc &lt-slides&gt-

Tom W. Bell, Chapman University School of Law &lt-slides&gt-

DIY enterprise prediction markets as revelators of institutional lies

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Adam Siegel of Inkling Markets:

Mike,

The context of that discussion was talking about allowing people to create their own markets vs. having them only be run by a central entity or only through recommendations by a consulting firm.

We were also talking about the insights you may get by running prediction markets that are not readily apparent in the market results.

The original point was, by allowing people to ask as many questions as possible, the questions may be a signal themselves pointing to something that you didn’t previously know about. If someone asks a question about the probability of a risk factor occurring that you never even considered before, for example. That would never have been uncovered, otherwise, because the “prediction market administrators” wouldn’t even have known to ask.

Consensus Point wins… NewsFutures and others lose…

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David Perry (of Consensus Point) has just clinched a deal.

I have told you many times that David Perry is a very gifted salesperson and business executive. Under-rate him at your own risk.

UPDATE: I&#8217-m told it&#8217-s a nano deal. :-D

Using Prediction Markets to Track Information Flows: Evidence from Google – VIDEO – Bo Cowgill on Googles enterprise prediction markets – OReilly Money:Tech

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Using Prediction Markets to Track Information Flows: Evidence from Google – (PDF file – PDF file) – by Bo Cowgill, Justin Wolfers, and Eric Zitwewitz – 2008-01-06

Via Daniel Horowitz (Business and Technology Consultant)

Blip.TV &#8212- (FLV file)

It&#8217-s cool. :-D

Google Web Search

Using Prediction Markets to Track Information Flows: Evidence from Google – (PDF file – PDF file) – by Bo Cowgill, Justin Wolfers, and Eric Zitwewitz – 2008-01-06

ABSTRACT: In the last 2.5 years, Google has conducted the largest corporate experiment with prediction markets we are aware of. In this paper, we illustrate how markets can be used to study how an organization processes information. We document a number of biases in Google’s markets, most notably an optimistic bias. Newly hired employees are on the optimistic side of these markets, and optimistic biases are significantly more pronounced on days when Google stock is appreciating. We find strong correlations in trading for those who sit within a few feet of one another- social networks and work relationships also play a secondary explanatory role. The results are interesting in light of recent research on the role of optimism in entrepreneurial firms, as well as recent work on the importance of geographical and social proximity in explaining information flows in firms and markets.

DISCUSSION: In the past few years, many companies have experimented with prediction markets. In this paper, we analyze the largest such experiment we are aware of. We find that prices in Google’s markets closely approximated event probabilities, but did contain some biases, especially early in our sample. The most interesting of these was an optimism bias, which was more pronounced for subjects under the control of Google employees, such as would a project be completed on time or would a particular office be opened. Optimism was more present in the trading of newly hired employees, and was significantly more pronounced on and immediately following days with Google stock price appreciation. Our optimism results are interesting given the role that optimism is often thought to play in motivation and the success of entrepreneurial firms. They raise the possibility of a “stock price-optimism-performance-stock price” feedback that may be worthy of further investigation. We also examine how information and beliefs about prediction market topics move around an organization. We find a significant role for micro-geography. The trading of physically proximate employees is correlated, and only becomes correlated after the employees begin to sit near each other, suggesting a causal relationship. Work and social connections play a detectable but significantly smaller role.

An important caveat to our results is that they tell us about information flows about prediction market subjects, many of which are ancillary to employees’ main jobs. This may explain why physical proximity matters so much more than work relationships – if prediction market topics are lower-priority subjects on which to exchange information, then information exchange may require the opportunities for low-opportunity-cost communication created by physical proximity. Of course, introspection suggests that genuinely creative ideas often arise from such low-opportunity-cost communication. Google’s frequent office moves and emphasis on product innovation may provide an ideal testing ground in which to better understand the creative process.

PAPER BODY: In the last 4 years, many large firms have begun experimenting with internal prediction markets run among their employees. The primary goal of these markets is to generate predictions that efficiently aggregate many employees’ information and augment existing forecasting methods. […] In this paper, we argue that in addition to making predictions, internal prediction can provide insight into how organizations process information. Prediction markets provide employees with incentives for truthful revelation and can capture changes in opinion at a much higher frequency than surveys, allowing one to track how information moves around an organization and how it responds to external events. […]

We can draw two main conclusions. The first is that Google’s markets, while reasonably efficient, reveal some biases. During our study period, the internal markets overpriced securities tied to optimistic outcomes by 10 percentage points. The optimistic bias in Google’s markets was significantly greater on and following days when Google stock appreciated. Securities tied to extreme outcomes were underpriced by a smaller magnitude, and favorites were also overpriced slightly. These biases in prices were partly driven by the trading of newly hired employees- Google employees with longer tenure and more experience trading in the markets were better calibrated. Perhaps as a result, the pricing biases in Google’s markets declined over our sample period, suggesting that corporate prediction markets may perform better as collective experience increases.

The second conclusion is that opinions on specific topics are correlated among employees who are proximate in some sense. Physical proximity was the most important of the forms of proximity we studied. Physical proximity needed to be extremely close for it to matter. Using data on the precise latitude and longitude of employees’ offices, we found that prediction market positions were most correlated among employees sharing an office, that correlations declined with distance for employees on the same floor of a building, and that employees on different floors of the same building were no more correlated than employees in different cities.4 Google employees moved offices extremely frequently during our sample period (in the US, approximately once every 90 days), and we are able to use these office moves to show that our results are not simply the result of like-minded individuals being seated together. […]

Our findings contribute to three quite different literatures: on the role of optimism in entrepreneurial firms, on employee communication in organizations, and on social networks and information flows among investors. […]

The lessons of the literature informed Google CEO Eric Schmidt and Chief Economist Hal Varian’s (2005) third rule for managing knowledge workers: “Pack Them In.” Indeed, the fact that Google employees moved so frequently during our sample period suggests that considerable thought is put into optimizing physical locations. To this literature, which has largely relied on retrospective surveys to track communication, we illustrate how prediction markets can be used as high-frequency, market-incentivized surveys to track information flows in real-time. […]

Google’s prediction markets were launched in April 2005. The [Google prediction] markets are patterned on the Iowa Electronic Markets (Berg, et. al., 2001). In Google’s terminology, a market asks a question (e.g., “how many users will Gmail have?”) that has 2-5 possible mutually exclusive and completely exhaustive answers (e.g., “Fewer than X users”, “Between X and Y”, and “More than Y”). Each answer corresponds to a security that is worth a unit of currency (called a “Gooble”) if the answer turns out to be correct (and zero otherwise). Trade is conducted via a continuous double auction in each security. As on the IEM, short selling is not allowed– traders can instead exchange a Gooble for a complete set of securities and then sell the ones they choose. Likewise, they can exchange complete set of securities for currency. There is no automated market maker, but several employees did create robotic traders that sometimes played this role.

Each calendar quarter from 2005Q2 to 2007Q3 about 25-30 different markets were created. Participants received a fresh endowment of Goobles which they could invest in securities. The markets’ questions were designed so that they could all be resolved by the end of the quarter. At the end of the quarter, Goobles were converted into raffle tickets and prizes were raffled off. The prize budget was $10,000 per quarter, or about $25-100 per active trader (depending on the number active in a particular quarter). Participation was open to active employees and some contractors and vendors– out of 6,425 employees who had a prediction market account, 1,463 placed at least one trade. […]

Common types of markets included those forecasting demand (e.g., the number of users for a product) and internal performance (e.g., a product’s quality rating, whether a product would leave beta on time). […]

In addition, about 30 percent of Google’s markets were so-called “fun” markets –markets on subjects of interest to its employees but with no clear connection to its business (e.g., the quality of Star Wars Episode III, gas prices, the federal funds rate). Other firms experimenting with prediction markets that we are aware of have avoided these markets, perhaps out of fear of appearing unserious. Interestingly, we find that volume in “fun” and “serious” markets are positively correlated (at the daily, weekly, and monthly frequencies), suggesting that the former might help create, rather than crowd out, liquidity for the latter. […]

Google’s prediction markets are reasonably efficient, but did exhibit four specific biases: an overpricing of favorites, short aversion, optimism, and an underpricing of extreme outcomes. New employees and inexperienced traders appear to suffer more from these biases, and as market participants gained experience over the course of our sample period, the biases become less pronounced. […]

FOOT NOTE: One trader in Google’s markets wrote a trading robot that was extremely prolific and ended up participating in about half of all trades. Many of these trades exploited arbitrage opportunities available from simultaneously selling all securities in a bundle. In order to avoid having this trader dominate the (trade-weighted) results in Table 9, we include a dummy variable to control for him or her. None of the results discussed in the above paragraph are sensitive to removing this dummy variable.

APPENDIX:

Google Chart 1

Google Chart 2

Bo Cowgill&#8217-s precision point on micro-geography:

Below you can see a snapshot of trading in one of our offices. The areas where employees are making profitable decisions is green, and the areas where employees are making unprofitable decisions is red. There are about 16 profitable traders in that big green blotch in the middle!

Chart of the Day: Information Sharing at Google

More information from our previous blog post on the Google paper

Using Prediction Markets to Track Information Flows: Evidence from Google – (PDF file – PDF file) – by Bo Cowgill, Justin Wolfers, and Eric Zitwewitz – 2008-01-06

Using enterprise prediction markets too early in the innovation process is BAD.

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Jed Christiansen:

I don&#8217-t think that prediction markets need to be the incentive.

I think that when it comes to generating ideas, you need to be as open and inclusive as possible. The process should allow anyone that submits or helps develop an idea to share in any rewards from that idea. Once it&#8217-s developed, then it can move to a stage where you can do forecasting via a prediction market.

Using a prediction market too early can do two things:
1- Poor forecasting due to social influence.
2- Limit revolutionary new ideas.
It&#8217-s too easy to short an idea that looks strange, when in fact it looks odd because it&#8217-s revolutionary. The idea process should foster and develop ideas, not make them compete against each other.

I&#8217-m glad to have sparked a little discussion here.

Previously: Innovation Mechanism = Voting Mechanism + Prediction Market Mechanism

Inkling Markets GodFather Speaks Out.

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Taking his propos and applying them to Adam Siegel and Nate Kontny, you&#8217-d get that:

  • The key is Adam Siegel and Nate Kontny&#8217-s determination. They refuse to fail.
  • The key for Nate Kontny was to find out a good co-founder &#8212-that was Adam Siegel.
  • [M]arket is the biggest determinant in the outcome of successful startups. […] Smart people [like Adam Siegel and Nate Kontny] will find big markets.

Same things could be said of David Perry and Ken Kittlitz, or Emile Servan-Schreiber and Maurice Balick.

Deep Throat on the journalists fatigue for reporting on prediction markets

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When we recently talked to a MSM reporter for a major article, he/she specifically said he/she didn&#8217-t want to write about public prediction exchanges because &#8220-there is nothing new there,&#8221- and was even hesitant to write about the activities of certain private, high-tech companies because they already have a reputation for &#8220-trying anything.&#8221- If that attitude is prevalent among other journalists, there may already be a fatigue setting in which is why you saw very little interest in the latest WSJ article on political prediction markets. Thinking about the readership of the major business press, through several feature articles there is already an awareness about the basics. There is limited return in writing yet another: &#8220-people are trading on everything from housing futures to political candidates, isn&#8217-t that amazing?&#8221-

There also seems to be very little innovation coming from the major public exchanges. When&#8217-s the last time any of the major prediction exchanges did anything truly noteworthy with their platform that was worth writing about? […]

The novelty of it all is wearing off, the &#8220-wisdom of crowds&#8221- stories have been done, and the public exchanges are going to need to come up with Act II, either through innovation, new content strategies, or partnerships.

STRAIGHT FROM THE DOUBLESPEAK DEPARTMENT: NewsFutures CEO Emile Servan-Schreiber, well known to chase tirelessly the Infidels who dare calling prediction markets their damn polling system, is eager to sell the confusion to his clients and whomever would listen.

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Emile&#8217-s made up a phrase that means nothing (except in his fertile imagination), &#8220-a proprietary prediction market variant&#8220- &#8212-sounds like a red herring to me.

Unlike Consensus Point, Inkling Markets and Xpree, NewsFutures is the only prediction market software vendor not to have adopted Robin Hanson&#8217-s MSR &#8212-a simplified trading technology now in use in most enterprise prediction markets.