Difference between revisions of "Finding Paul Revere"
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[https://towardsdatascience.com/3-ways-to-load-csv-files-into-colab-7c14fcbdcb92 Get Started: 3 Ways to Load CSV files into Colab | A Apte - Towards Data Science] | [https://towardsdatascience.com/3-ways-to-load-csv-files-into-colab-7c14fcbdcb92 Get Started: 3 Ways to Load CSV files into Colab | A Apte - Towards Data Science] | ||
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* [http://barabasi.com/book/linked Linked: How Everything Is Connected to Everything Else and What It Means for Business, Science, and Everyday Life | Albert-László Barabási] | * [http://barabasi.com/book/linked Linked: How Everything Is Connected to Everything Else and What It Means for Business, Science, and Everyday Life | Albert-László Barabási] | ||
* [https://www.penguinrandomhouse.com/books/549846/the-square-and-the-tower-by-niall-ferguson/ The Square and the Tower | Niall Ferguson] | * [https://www.penguinrandomhouse.com/books/549846/the-square-and-the-tower-by-niall-ferguson/ The Square and the Tower | Niall Ferguson] | ||
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− | <b> | + | <b>Authors in Conversation: Niall Ferguson and Albert-Laszlo Barabasi |
− | </b><br> | + | </b><br>Harvard Club of Boston's Author Series hosted a special evening conversation with renowned historian Niall Ferguson and the nation's foremost network science expert Albert-Laszlo Barabasi. In his most recent book, The Square and the Tower, Ferguson applies lessons from Barabasi's pioneering work in network science to the domain of historical analysis, drawing insights from a wide range of fascinating examples across past decades and centuries, with important implications for current affairs. As Barabasi has demonstrated both in his academic work and in his popular writing (Linked), network science research has led to meaningful discoveries in areas ranging from biology and medicine, to institutional analysis and social networks. |
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− | <b> | + | <b>Niall Ferguson on History’s Hidden Networks |
− | </b><br> | + | </b><br>Have historians misunderstood everything? Have they missed the single greatest idea that best explains the past? Niall Ferguson is the preeminent historian of the ideas that define our time. He has challenged how we think about money, power, civilisation and empires. Now he wants to reimagine history itself. In October 2017, Ferguson came to the Intelligence Squared stage to unveil his new book, 'The Square and The Tower'. Historians have always focused on hierarchies, he argues – on the elites that wield power. Economists have concentrated on the marketplace – on the economic forces that shape change. These twin structures are symbolised for Ferguson by Siena’s market square, and its civic tower looming above. But beneath both square and tower runs something more deeply significant: the hidden networks of relationships, ideas and influence. Networks are the key to history. The greatest innovators have been ‘superhubs’ of connections. The most powerful states, empires and companies have been those with the most densely networked structures. And the most transformative ideas – from the printing presses that launched the Reformation to the Freemasonry that inspired the American Revolution – have gone viral precisely because of the networks within which they spread. ‘When we understand these core insights of network science,’ says Ferg |
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Revision as of 20:41, 16 October 2020
YouTube search... ...Google search
- Using Metadata to Find Paul Revere | Kieran Healy
- The data come from an appendix to David Hackett Fischer's Paul Revere's Ride (Oxford University Press, 1995)
- The Other Ride of Paul Revere: The Brokerage Role In The Making of The American Revolution | Shin-Kap Han
- Math for Intelligence
- Social Network Analysis (SNA)
London, 1772.
I have been asked by my superiors to give a brief demonstration of the surprising effectiveness of even the simplest techniques of the new-fangled Social Networke Analysis in the pursuit of those who would seek to undermine the liberty enjoyed by His Majesty’s subjects. This is in connection with the discussion of the role of “metadata” in certain recent events and the assurances of various respectable parties that the government was merely “sifting through this so-called metadata” and that the “information acquired does not include the content of any communications”. I will show how we can use this “metadata” to find key persons involved in terrorist groups operating within the Colonies at the present time. I shall also endeavour to show how these methods work in what might be called a relational manner...
To play...
1. Download from Kieran Healy files | Github for reference
2. Download from Mark Bernico's files | GitHub]; Boston - 1776.ipynb Jupyter notebook and PaulRevereAppD.csv data file
3. Upload Mark Bernico's files to your Google Drive
Notebook Setup
4. Obtain a Colaboratory account if you don't already have one
5. Setup Colab app in your Google Drive account by watching 1:45 minutes into the following video. Optionally starting at 2:35 setting up a GPU; menu Edit | Notebook settings
6. How to upload from a local file on your computer to Colab by watching the following video, and from this Colab's Help Notebook 'copy and paste' into new cells per the video
7. Note: As you step though the notebook, you will need to put parenthesis around two print statements; print(people_x_groups.shape) & print(groups_x_people.shape)
8. Save your notebook; File | Save <or> CNTRL+S Note: To open your recent files in Colab click here
9. Extra credit: Edit the notebook to graph organizations as shown in Healy's blog by switching the order of the matrix multiplication; groups_adj = groups_x_people.dot(people_x_groups) and replicating the code for groups_adj.
Functional Explanations
- NumPy for Matrices are collections of elements into rows and columns. Matrix multiplication relies on Dot Product to multiply various combinations of rows and columns. A thing about multiplying matrices is that the order matters - multiply one way to see group relationships and multiply opposite way to view people relationships.
- NetworkX for creation, manipulation, and study of the structure, dynamics, and functions of complex networks
- Matplotlib for generating plots, histograms, power spectra, bar charts, errorcharts, scatterplots, etc
- In 1974's The Duality of Persons and Groups, Ronald Breiger laid out a technique for obtaining a persons x persons adjacency matrix and a groups x groups adjacency matrix from a persons x groups affiliation matrix.
- Adjacency Matrix - is a 2D array of size V x V where V is the number of vertices in a graph. The matrix is often used in network analysis to represent the adjacency of each person to each other person in a network. An adjacency matrix is a square person-by-person matrix
- Eigenvector Centrality - a measure of the influence of a node in a network
- Knowledge Graphs are very useful ways of presenting information about social networks.
Google Drive Option: How to upload from a local file on your computer to Colab by watching 6:30 minutes into the Notebook Setup video. From this Colab's Help Notebook 'copy and paste' per the video
Get Started: 3 Ways to Load CSV files into Colab | A Apte - Towards Data Science
Network Pattern
- Linked: How Everything Is Connected to Everything Else and What It Means for Business, Science, and Everyday Life | Albert-László Barabási
- The Square and the Tower | Niall Ferguson
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