Beispiel #1
0
def ProcessScoresTeamwise(pairs):
    """Average number of goals for each team.

    pairs: map from (team1, team2) to (score1, score2)
    """
    # map from team to list of goals scored
    goals_scored = {}
    for key, entries in pairs.iteritems():
        t1, t2 = key
        for entry in entries:
            g1, g2 = entry
            goals_scored.setdefault(t1, []).append(g1)
            goals_scored.setdefault(t2, []).append(g2)

    # make a list of average goals scored
    lams = []
    for key, goals in goals_scored.iteritems():
        lam = thinkbayes2.Mean(goals)
        lams.append(lam)

    # make the distribution of average goals scored
    cdf = thinkbayes2.MakeCdfFromList(lams)
    thinkplot.Cdf(cdf)
    thinkplot.Show()

    mu, var = thinkbayes2.MeanVar(lams)
    print('mu, sig', mu, math.sqrt(var))
Beispiel #2
0
def PlotCdfs(d, labels):
    """Plot CDFs for each sequence in a dictionary.

    Jitters the data and subtracts away the mean.

    d: map from key to sequence of values
    labels: map from key to string label
    """
    thinkplot.Clf()
    for key, xs in d.items():
        mu = thinkbayes2.Mean(xs)
        xs = thinkbayes2.Jitter(xs, 1.3)
        xs = [x - mu for x in xs]
        cdf = thinkbayes2.MakeCdfFromList(xs)
        thinkplot.Cdf(cdf, label=labels[key])
    thinkplot.Show()