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Computation of the utilities

The agents choose cars according to their "internal representation" of the characteristics of the products. These internal representations are probability distributions of the utility of each product that are computed according to the following procedure.

- Agents access some public information about the performance of each brand i, represented by a normal prior probability distribution , with mean and standard deviation .

- They take advice from n other purchasers, among which bought brand i. Only those purchaser that bought brand i contribute to the information about brand i by sending a measure of its utility:

where is the average utility of brand i in the absence of pollution. Since the sampled purchasers already possess the brand, their opinion about the brand includes the negative effects of pollution. We suppose here that they don't know the origin of pollution, in such a way that the decrease in the car utility is proportional to local pollution, irrespective of which brand they have purchased themselves. Utility is then decreased by the presence of pollution P expressed in the convenient cost units. , representing measurement error, is a normally distributed random variable, but with mean 0 and standard deviation invariant through the iteration process.

The agents process this information to obtain a posterior distribution of performances. This processing is done by taking the convolution products of Gaussian integrals corresponding to the prior and to the information obtained from other purchasers. The average expected posterior utility is then:

where index j refers to the pooled agent. The mean utilities are averaged with a weighting factor that is inversely proportional to the variance of the distribution:

In other words the posterior utilities average the different polled opinions weighted inversely to the variance of the distributions. The computation of posterior is illustrated for a particular case on figure 1.

 
Figure 1: An example of updating the internal representation of an agent according to equations 2 and 3. The prior distribution of utilities for a given brand, with mean 5 and standard deviation 0.5 (intermediate linewidth Gaussian) is updated to the posterior distribution with mean 4.83 and standard deviation 0.41 (larger linewidth Gaussian) after taking into account information obtained from neighbors with means 3 and 6 and standard deviation 2 (smaller linewidth Gaussians). In this example, the posterior distribution is shifted and sharpened with respect to the prior.

Economic agents are adverse to risk. The greater the uncertainty in the value of a product, the less they are likely to buy it. To take into account risk aversion of the agents, we use a classical mean variance utility function: one more term, proportional to the variance of the posterior distribution, is added to to compute the effective utility function used by the agents to choose their car:

where is the risk aversion parameter and is updated by narrowing the variance according to the number of sampled purchasers. The complete expression for is then:

Upon computing for each product, purchasers choose the brand with the highest expected utility.



next up previous
Next: Pollution dynamics Up: THE MODEL Previous: THE MODEL



weisbuch
Tue Feb 4 16:55:42 GMT+0100 1997