How-to Decode Outputs in NLP

jamescalam

James Briggs

Posted on April 11, 2021

How-to Decode Outputs in NLP

In this video, we will cover three ways to decode the output probabilities from NLP models - greedy search, random sampling, and beam search.

Learning how to decode outputs can make a huge difference in diagnosing model issues and improving text output quality - and as an added bonus it's super easy.

One of the often-overlooked parts of sequence generation in natural language processing (NLP) is how we select our output tokens — otherwise known as decoding.

You may be thinking — we select a token/word/character based on the probability of each token assigned by our model.

This is half-true — in language-based tasks, we typically build a model which outputs a set of probabilities to an array where each value in that array represents the probability of a specific word/token.

At this point, it might seem logical to select the token with the highest probability? Well, not really — this can create some unforeseen consequences — as we will see soon.

When we are selecting a token in machine-generated text, we have a few alternative methods for performing this decode — and options for modifying the exact behavior too.

In this video we will explore three different methods for selecting our output token, these are:

- Greedy Decoding
- Random Sampling
- Beam Search
Enter fullscreen mode Exit fullscreen mode
💖 💪 🙅 🚩
jamescalam
James Briggs

Posted on April 11, 2021

Join Our Newsletter. No Spam, Only the good stuff.

Sign up to receive the latest update from our blog.

Related