Exemplo n.º 1
0
def mean_f(M):
    nodes = listify_nodes(M)
    
    avg = 0
    for n in nodes:
        avg += f_(n)
    return avg / len(nodes)
Exemplo n.º 2
0
def median_f(M):
    nodes = listify_nodes(M)
    nodes.sort(key=f_)
    
    num = len(nodes)
    
    n1 = nodes[math.ceil((num-1)/2)]
    n2 = nodes[math.floor((num-1)/2)]
    med = (f_(n1)+f_(n2))/2
    
    return med
Exemplo n.º 3
0
def find_root(T):
     nodes = listify_nodes(T)
     
     max_ = f_(nodes[0])
     max_node = nodes[0]
     for n in nodes:
         if(f_(n) > max_):
             max_ = f_(n)
             max_node = n
             
     return max_node['name']
Exemplo n.º 4
0
def shift_f(M, center = "median"):
    if center == "median":
        center = median_f(M)
    elif center == "mean":
        center = mean_f(M)
    else:
        print("Invalid center parameter. Valid choices are 'median' and 'mean'. Using median for shifting.")
        center = median_f(M)
        
    nodes = listify_nodes(M)
    for n in nodes:
        n['value'] = n['value'] - center
Exemplo n.º 5
0
def calc_values_height_reorient(G, pos, angle=None):
    
    #Get the list of node objects
    n = listify_nodes(G)
    
    if(angle!=None):
        reorient(pos, angle)
        
        #Set all of the function values by height
        for i in range(0, len(n)):
            n[i]['value'] = height(pos[n[i]['name']], math.pi / 2)
            
    else:
        for i in range(0, len(n)):
            n[i]['value'] = pos[n[i]['name']][1]
Exemplo n.º 6
0
def calc_values_height(G, pos, angle):
    direction = [math.cos(angle), math.sin(angle)]
    
    x = direction[0]
    y = direction[1]
    if(len(direction) > 2 or (x==0 and y==0)):
        print("Faulty input direction!")
        return
    
    #Get the list of node objects
    n = listify_nodes(G)
    
    #Set all of the function values by height
    for i in range(0, len(n)):
        n[i]['value'] = height(pos[n[i]['name']], angle)
Exemplo n.º 7
0
def merge_tree(G, shift=True):
    preprocess(G)
    
    #Get the nodes from the networkx graph
    nodes = listify_nodes(G)
    nodes.sort(key=f_)
    
    #The legendary Merge Tree
    M = nx.Graph()
    for i in range(0, len(nodes)):
        add_node(nodes[i]['name'], G, M)
    
    reduce(M)
    if(shift):
        shift_f(M)
        
    return M