*I think it better to send you the script in its integrity. I ran now and it works. * *about work it is* work array([[ 5.63011247], [-2.31453939], [22.23122848], [15.37678101]]) np.shape(work) (4, 1)
*my best regards. * *Ulderico.* _________________________________________________________________________________ import numpy as np import pandas as pd dataraw = pd.read_excel("C:\Pyth\iris.xlsx") #standardize data --- dataraw is a DataFrame #locate data in the DataFrame datar = dataraw.iloc[:,1:5] means = datar.mean(axis = 0) stdev = datar.std(axis = 0) data = (datar-means)/stdev #keep just quantitative variables #CENTRALITY INDEX scalar = pd.merge(data, data, how = 'cross') point1 = scalar.loc[:, 'sepal length _x':'petal width _x'] point2 = scalar.loc[:, 'sepal length _y':'petal width _y'] apoint1 = point1.to_numpy(dtype = float) apoint2 = point2.to_numpy(dtype = float) delta = (apoint1 - apoint2) force = 0 if delta.any() != 0: force = np.exp(-abs(delta)) sig = np.sign(delta) sforce = sig*force dsforce = pd.DataFrame(sforce) #dsforce.to_excel('C:\Pyth\dsforce.xlsx') arr = np.ones((150, 1),) sforcet = sforce.T sum_force =np.zeros((1, 4),) #do not use empty arrays start = 0 end = 150 for i in range(150): s_forcet = sforcet[:, start:end] work = np.matmul(s_forcet, arr) sum_force =np.concatenate((sum_force, work.reshape(1, 4)), axis = 0) start = end end +=150 sumforce = sum_force[1:, :] dsumforce = pd.DataFrame(sumforce) dsumforce.to_excel('C:\Pyth\sumforce_sqc.xlsx') sum_force_square = sumforce**2 ssT = np.ones((4, 1),) T_w_ = np.sqrt(np.matmul(sum_force_square, ssT)) dT_w_ = pd.DataFrame(T_w_, ) dT_w_.to_excel('C:\Pyth\T_w_.xlsx') Il giorno dom 17 set 2023 alle ore 18:14 Jaime Lopez <jalop...@gmail.com> ha scritto: > Hi there, > > I got interested in your project, but I found this error from the > beginning (see attached image). > The work array cannot be reshaped to (1,4), cause it has shape (2,1), any > suggestions? > > JL > > [image: image.png] > > On Thu, Sep 14, 2023 at 11:29 AM Ulderico Santarelli < > ulderico.santare...@gmail.com> wrote: > >> *I am an old guy who started programming around the seventies of >> the last century* with ASSEMBLER 360, then FORTRAN, PL1, APL, IBM >> APPLICATION SYSTEM and, last, the marvelous SAS. Having heard around about >> the powerful, flexible, functionally complete PYTHON UNIVERSE”, >> encompassing an advanced Object-Oriented Language and a very wide family of >> packages, I decided to run an exercise about a problem I've been >> tackling since my youth (have a look at the Bibliography). I succeeded in >> completing it in a few days and I'm attaching my solution to the problem of >> finding the points in a sample that are "central" in a surrounding >> topological neighborhood. They are eligible as centroids for a Cluster >> Analysis after the aggregation of "too near points'. The solution is based >> on the search of potential wells in a suitable potential field, similar to >> the one all of us studied in high school. Therefore, too near points may be >> in the same potential well. >> No more words, have a look at the attachment. >> My coding is that of a beginner. I'm sure everybody would find more >> efficient coding. As a comment: I started studying Python around May 15th >> 2023. >> My best regards. >> Ulderico Santarelli. >> _______________________________________________ >> scikit-learn mailing list >> scikit-learn@python.org >> https://mail.python.org/mailman/listinfo/scikit-learn >> > > > -- > > *Jaime Lopez Carvajal* > _______________________________________________ > scikit-learn mailing list > scikit-learn@python.org > https://mail.python.org/mailman/listinfo/scikit-learn >
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