Computational Linguistics: Crash Course Linguistics #15 | Summary and Q&A

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January 15, 2021
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Computational Linguistics: Crash Course Linguistics #15

TL;DR

Natural Language Processing (NLP) is difficult because the skills that are easy for humans are difficult for computers and vice versa.

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Key Insights

  • 🎰 Computers struggle to process human language because the skills that are easy for humans are difficult for machines.
  • 💁 Natural language processing involves several steps, including transforming text into digital form, determining word meanings and relationships, and producing a useful output.
  • ❓ NLP can be achieved through supervised or unsupervised learning, but biases in the training data can affect the results.
  • 👨‍🔬 Addressing bias in NLP is an active area of research and requires ethical consideration.
  • 🤘 Language technology for signed languages is under-developed, and gloves cannot accurately translate signed languages due to the complexity of grammar and vocabulary.

Transcript

Hi, I'm Taylor and welcome to Crash Course Linguistics! Computers are pretty great, but they can only do stuff that humans tell them to do. Counterintuitively, this means that the more automatic a human skill is, the more difficult it is for us to teach to computers. It's easy for us to teach a computer to calculate millions of digits of pi, or pla... Read More

Questions & Answers

Q: Why is teaching computers to process human language difficult?

Teaching computers to process human language is difficult because the skills that are difficult for humans, such as learning new words, are easy for computers, and the skills that are easy for humans, such as understanding accents or emotions, are difficult for computers.

Q: What are the steps involved in natural language processing?

The steps in natural language processing include transforming physical text into digital text, determining word meanings and relationships, and producing a useful output in natural human language.

Q: What is the difference between supervised learning and unsupervised learning in NLP?

Supervised learning involves training the computer using matched data with two corresponding parts, while unsupervised learning uses non-parallel data with only one component. Semi-supervised learning combines both approaches.

Q: How can biases impact natural language processing?

Biases can impact natural language processing in several ways, including the reflection of historical bias in the output, under-representation of certain groups in the training data, and the misalignment between the features and labels in the training data.

Summary & Key Takeaways

  • NLP is the process of programming computers to process human language and is used in various applications such as search engines, voice-activated home systems, and spell checkers.

  • NLP involves several steps, including transforming physical text into digital text, determining word meanings and relationships, and producing a useful output in natural human language.

  • NLP can be achieved through supervised learning using matched data or unsupervised learning using non-parallel data, but biases in the training data can impact the results.

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