65 lines
4.9 KiB
Plaintext
65 lines
4.9 KiB
Plaintext
# (PART) Model {-}
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# Introduction {#model-intro}
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Now that you are equipped with powerful programming tools we can finally return to modelling. You'll use your new tools of data wrangling and programming, to fit many models and understand how they work. The focus of this book is on exploration, not confirmation or formal inference. But you'll learn a few basic tools that help you understand the variation within your models.
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```{r echo = FALSE, out.width = "75%"}
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knitr::include_graphics("diagrams/data-science-model.png")
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```
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The goal of a model is to provide a simple low-dimensional summary of a dataset. Ideally, the model will capture true "signals" (i.e. patterns generated by the phenomenon of interest), and ignore "noise" (i.e. random variation that you're not interested in). Here we only cover "predictive" models, which, as the name suggests, generate predictions. There is another type of model that we're not going to discuss: "data discovery" models. These models don't make predictions, but instead help you discover interesting relationships within your data. (These two categories of models are sometimes called supervised and unsupervised, but I don't think that terminology is particularly illuminating.)
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This book is not going to give you a deep understanding of the mathematical theory that underlies models. It will, however, build your intution about how statistical models work, and give you a family of useful tools that allow you to use models to better understand your data:
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* In [model basics], you'll learn how models work mechanistically, focussing on
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the important family of linear models. You'll learn general tools for gaining
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insight into what a predictive model tells you about your data, focussing on
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simple simulated datasets.
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* In [model building], you'll learn how to use models to pull out known
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patterns in real data. Once you have recognised an important pattern
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it's useful to make it explicitly in a model, because then you can
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more easily see the subtler signals that remina.
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* In [many models], you'll learn how to use many simple models to help
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understand complex datasets. This is a powerful technique, but to access
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it you'll need to combine modelling and programming tools.
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* In [model assessment], you'll learn more about the statistical side of
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modelling. Ideally, you don't just want a model that works just with the
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data that you've observe, but also generalises to new situations. You'll
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learn two powerful techniques, cross-validation and bootstrapping, built
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on the powerful idea of random resamples. These will help you understand
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how your model will behave on new datasets.
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## Hypothesis generation vs. hypothesis confirmation
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In this book, we are going to use models as a tool for exploration, completing the trifecta of EDA tools introduced in Part 1. This is not how models are usually taught, but they make for a particularly useful tool in this context. Every exploratory analysis will involve some transformation, modelling, and visualisation.
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Models are more common taught as tools for doing inference, or for confirming that an hypothesis is true. Doing this correctly is not complicated, but it is hard. There is a pair of ideas that you must understand in order to do inference correctly:
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1. Each observation can either be used for exploration or confirmation,
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not both.
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1. You can use an observation as many times as you like for exploration,
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but you can only use it once for confirmation. As soon as you use an
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observation twice, you've switched from confirmation to exploration.
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This is necessary because to confirm a hypothesis you must use data that is independent of the data that you used to generate the hypothesis. Otherwise you will be over optimistic. There is absolutely nothing wrong with exploration, but you should never sell an exploratory analysis as a confirmatory analysis because it is fundamentally misleading. If you are serious about doing an confirmatory analysis, before you begin the analysis you should split your data up into three pieces:
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1. 60% of your data goes into a __training__ (or exploration) set. You're
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allowed to do anything you like with this data: visualise it and fit tons
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of models to it.
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1. 20% goes into a __query__ set. You can use this data to compare models
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or visualisations by hand, but you're not allowed to use it as part of
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an automated process.
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1. 20% is held back for a __test__ set. You can only use this data ONCE, to
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test your final model.
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This partitioning allows you to explore the training data, occassionally generating candidate hypotheses that you check with the query set. When you are confident you have the right model, you can check it once with the test data.
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(Note that even when doing confirmatory modelling, you will still need to do EDA. If you don't do any EDA you will remain blind to the quality problems with your data.)
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