コード例 #1
0
def squareeval(genome: Genome):
    table = []
    for i in range(100):
        table.append([[i], [i * i]])
    score = 0
    for experience in table:
        x, y = experience[0], experience[1]
        output = genome.forward(x)
        score += abs(output[0] - y[0])
    return score
コード例 #2
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def squarerooteval(genome: Genome):
    score = 0.0
    table = []
    for i in range(100):
        table.append([[i], [np.sqrt(i)]])
    for experience in table:
        x, y = experience[0], experience[1]
        output = genome.forward(x)
        score += abs(output[0] - y[0])
    return score
コード例 #3
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def xorevaluate(genome: Genome):
    genome.cleaner()
    table = [([0, 0], [0]), ([0, 1], [1]), ([1, 0], [1]), ([1, 1], [0])]
    score = 0.0
    episodes = 20
    for _ in range(episodes):
        shuffle(table)
        for experience in table:
            x, y = experience[0], experience[1]
            output = genome.forward(x)
            score += abs(output[0] - y[0])
    return score
コード例 #4
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def lunareval(genome: Genome):
    env = gym.make('LunarLander-v2')
    number_of_episode = 20
    total_reward = 0
    for i_episode in range(number_of_episode):
        observation = env.reset()
        episode_reward = 0
        for t in range(100):
            # env.render()
            forward_values = genome.forward(observation)
            softmax_values = softmax(forward_values)
            # action_vector = np.array(np.round(softmax_values))
            action = np.random.choice(np.arange(4), p=softmax_values)
            observation, reward, done, info = env.step(int(action))
            if done:
                break
            episode_reward += reward
        total_reward += episode_reward
    env.close()
    print(total_reward / number_of_episode)
    return total_reward / number_of_episode
コード例 #5
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def experience1():
    # Experience 1
    genome = Genome(input_size=2, output_size=1)
    genome.nodes += [Node(), Node(), Node()]
    genome.connections += [
        Connection(0, 3, 0.0),
        Connection(0, 4, 0.0),
        Connection(0, 5, 0.0),
        Connection(1, 3, 0.0),
        Connection(1, 4, 0.0),
        Connection(1, 5, 0.0),
        Connection(3, 2, 0.0),
        Connection(4, 2, 0.0),
        Connection(5, 2, 0.0)
    ]
    fitter = Fitter(genome=genome, evaluate=xorevaluate)
    genome = fitter.fit(episode=5000, timebreak=300, scorebreak=0.1)
    genome.cleaner()
    table = [([0, 0], [0]), ([0, 1], [1]), ([1, 0], [1]), ([1, 1], [0])]
    score = 0
    for _ in range(20):
        shuffle(table)
        for experience in table:
            x, y = experience[0], experience[1]
            output = genome.forward(x)
            score += abs(output[0] - y[0])
            print(x, ' : ', output)
    print('score : ', score)
    print(genome.print_graph())
    criterions = ['scores', 'familysizes', 'episodetimes']
    for crit in criterions:
        plt.plot(fitter.history[crit], label=crit)
        mean = [
            np.mean(fitter.history[crit])
            for _ in range(len(fitter.history[crit]))
        ]
        plt.plot(mean, label=crit + '_mean')
        plt.xlabel('episode')
        plt.ylabel(crit)
        plt.show()