, i.e. we excluded players whose last activity was longer than
, i.e. we excluded players whose last activity was longer than 30 days ago. For dataset 3, utilised for Fig. 4, we took the complete timeseries of all players that had been in the game on day 238, which is the last day integrated in our database. For dataset 4, applied for Figs. eight and 7 and Tabs. 2 and 3, we utilised snapshot datasets separated by 240 days, starting at day 240. Following 240 days, the autocorrelation function of wealth has decayed to rauto 0:355, so the single data points might be treated as independent. The data contain a daily snapshot of the friendship and enmity networks, all players’ possessions, and alliance membership. For the trade network, we draw a hyperlink on day tif a trade has taken spot inside the time variety {60,t. Players who have only recently joined the game are naturally close to their initial wealth and are therefore excluded from datasets , 2, and 4. As a criterion for admitting a CCT244747 cost player to the dataset, we require that the players have actively played for ten days, or more precisely that they have spent at least 50,000 APs. Dataset contains 3,245 players, dataset 2 contains 4,483,75 data points from 6,662 distinct players, dataset 3 contains 3,693 players, and dataset 4 contains 25,95 data points from 2,86 distinct players on 5 distinct days. Dataset is a proper subset of dataset 2, and also of dataset 4. The powerlaw shown in Fig. A was determined by a linear leastsquare fit to the logarithms: For logP(W �w) Apl {a log w, P Apl and a were determined minimizing i:P(W �wi )0:05 D log P(W �wi ){Apl zalogwi D2 . In a similar way the exponential in Fig. A was obtained by choosing Aexp and Bexp {Tw minimizing P 2 i:P(W �wi )v0:5^P(W �wi )w0: D log P(W �wi ){Aexp zBexp wi D .We studied the economy of the virtual world of the PubMed ID:https://www.ncbi.nlm.nih.gov/pubmed/23467991 MMOG Pardus. We found that the wealth distribution in Pardus has a similar shape like wealth distributions of “real” economies, including an exponential bulk and a powerlaw tail. The powerlaw exponent of Pardus is within the range of realworld powerlaw exponents describing the moderately rich. The Gini index shows that wealth is slightly more equally distributed in Pardus than in many Western industrial countries. We observe that the shape of the wealth distribution is stable: eventual external perturbations exponentially relax to a stationary state. While the total wealth in Pardus increases over time, large scale conflicts hamper the creation of wealth. We found that an average player’s wealth grows linearly with his total activity. As total activity is limited by a player’s age (time in the game), wealth also increases linearly with the age of a player. Linear increase suggests that neither learning nor proportional growth (i.e. “rich get richer”) areLorenz curve and Gini indexLet N be the number of players, and wi the wealth of player i, ordered so that wi wiz V i[f . . . Ng. The Lorenz curve is given by the coordinatesPLOS ONE plosone.orgBehavioral and Network Origins of Wealth Inequalityj PLx jj , Nwi , wiLy i j N PiWealth is rescaled by the daily mean wealth Sw(t)T, The rescaled distributions are compared by A the JensenShannon divergence and B the KolmogorovSmirnov statistic. [60]. Black curves fit the decay of the perturbation by an exponential with decay time A tJS 5:7 and B tKS 5:2. Dotted black lines mark the previous level. (EPS) Cohort wealth as a function of time. Cohort (G ) contains all players who joined Pardus on the first day. Cohort 2 (G2 ) contains all players you joined bet.