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Algoliterary Encounters: Difference between revisions

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Start of the Algoliterary Encounters catalog.
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__NOTOC__
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== About ==
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* [[An Algoliterary Journey]]
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* [[Program]]
  
==== General Introduction ====
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==Algoliterary works==
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A selection of works by members of Algolit presented in other contexts before.
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* [[i-could-have-written-that]]
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* [[The Weekly Address, A model for a politician]]
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* [[In the company of CluebotNG]]
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* [[Oulipo recipes]]
  
==== Overview of Techniques ====
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==Algoliterary explorations==
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This chapter presents part of the research of Algolit over the past year.
  
===== Rule-based agents =====
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=== What the Machine Writes: a closer look at the output ===
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Two neural networks are presented more closely, what content do they produce?
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* [[CHARNN text generator]]
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* [[You shall know a word by the company it keeps]]
  
* [[introduction Rule-Based]]
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=== How the Machine Reads: Dissecting Neural Networks ===
 
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==== Datasets ====
* [[Oulipo Recipes]]
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Working with Neural Networks includes collecting big amounts of textual data.
 
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We compared a 'regular' size with the collection of words of the Library of St-Gilles.
* [[Textmining is]]
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* [[Many many words]]  
 
 
===== Classic Machine Learning =====
 
 
 
* [[introduction Classic Machine Learning]]
 
  
* [[i-could-have-written-that]]
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=====Public datasets=====
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Most commonly used public datasets are gathered at [https://aws.amazon.com/public-datasets/ Amazon].
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We looked closely at the following two:
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* [[Common Crawl]]
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* [[WikiHarass]]
  
* [[The Weekly Address]]
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=====Algoliterary datasets=====
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Working with literary texts allows for poetic beauty in the reading/writing of the algorithms.
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This is a small collection used for experiments.
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* [[The data (e)speaks]]
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* [[Frankenstein]]
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* [[Learning from Deep Learning]]
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* [[nearbySaussure]]
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* [[astroBlackness]]
  
===== Neural Networks =====
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==== From words to numbers ====
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As machine learning is based on statistics and math, in order to process text, words need to be transformed to numbers. In the following section we present three technologies to do so.
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* [[A Bag of Words]]
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* [[A One Hot Vector]]
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* [[About Word embeddings|Exploring Multidimensional Landscapes: Word Embeddings]]
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* [[Crowd Embeddings|Word Embeddings Casestudy: Crowd embeddings]]
  
* [[introduction Neural Networks]]
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===== Different vizualisations of word embeddings =====
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* [[Word embedding Projector]]
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* [[The GloVe Reader]]
  
* [[RCharNN]]
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===== Inspecting the technique behind word embeddings =====
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* [[word2vec_basic.py]]
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* [[Reverse Algebra]]
  
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=== How a Machine Might Speak ===
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If a computer model for language comprehension could speak, what would it say?
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* [[We Are A Sentiment Thermometer]]
  
==== Elements of Neural Networks ====
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== Sources ==
 
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The scripts we used and a selection of texts that kept us company.
==== Datasets ====
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* [[Algoliterary Toolkit]]
 
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* [[Algoliterary Bibliography]]
* Context of Neural Networks
 
  
* Frameworks & Existing Communities
 
  
* Algoliterary Works by Others
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[[Category:Algoliterary-Encounters]]

Latest revision as of 13:50, 2 November 2017

About

Algoliterary works

A selection of works by members of Algolit presented in other contexts before.

Algoliterary explorations

This chapter presents part of the research of Algolit over the past year.

What the Machine Writes: a closer look at the output

Two neural networks are presented more closely, what content do they produce?

How the Machine Reads: Dissecting Neural Networks

Datasets

Working with Neural Networks includes collecting big amounts of textual data. We compared a 'regular' size with the collection of words of the Library of St-Gilles.

Public datasets

Most commonly used public datasets are gathered at Amazon. We looked closely at the following two:

Algoliterary datasets

Working with literary texts allows for poetic beauty in the reading/writing of the algorithms. This is a small collection used for experiments.

From words to numbers

As machine learning is based on statistics and math, in order to process text, words need to be transformed to numbers. In the following section we present three technologies to do so.

Different vizualisations of word embeddings
Inspecting the technique behind word embeddings

How a Machine Might Speak

If a computer model for language comprehension could speak, what would it say?

Sources

The scripts we used and a selection of texts that kept us company.