未验证 提交 6f5d20ba 编写于 作者: J Javier 提交者: GitHub

Merge pull request #123 from jrzaurin/joss_review_tiny_changes

Joss review tiny changes
Pytorch-widedeep is being developed and used by many active community members. Your help is very valuable to make it better for everyone.
- **[TBA]** Check for the [Roadmap](https://github.com/jrzaurin/pytorch-widedeep/projects/1) or [Open an issue](https://github.com/microsoft/jrzaurin/pytorch-widedeep/issues) to report problems or recommend new features and submit a draft pull requests, which will be changed to pull request after intial review
- Check for the [Roadmap](https://github.com/users/jrzaurin/projects/3) or [Open an issue](https://github.com/jrzaurin/pytorch-widedeep/issues) to report problems or recommend new features and submit a draft pull requests, which will be changed to pull request after intial review
- Contribute to the [tests](https://github.com/jrzaurin/pytorch-widedeep/tree/master/tests) to make it more reliable.
- Contribute to the [documentation](https://github.com/jrzaurin/pytorch-widedeep/tree/master/docs) to make it clearer for everyone.
- Contribute to the [examples](https://github.com/jrzaurin/pytorch-widedeep/tree/master/examples) to share your experience with other users.
......
......@@ -28,10 +28,15 @@ text and images using Wide and Deep models in Pytorch
The content of this document is organized as follows:
1. [introduction](#introduction)
2. [The deeptabular component](#the-deeptabular-component)
3. [installation](#installation)
4. [quick start (tl;dr)](#quick-start)
- [pytorch-widedeep](#pytorch-widedeep)
- [Introduction](#introduction)
- [The ``deeptabular`` component](#the-deeptabular-component)
- [Installation](#installation)
- [Developer Install](#developer-install)
- [Quick start](#quick-start)
- [Testing](#testing)
- [How to Contribute](#how-to-contribute)
- [Acknowledgments](#acknowledgments)
### Introduction
......@@ -75,9 +80,10 @@ without a ``deephead`` component can be formulated as:
</p>
Where *'W'* are the weight matrices applied to the wide model and to the final
activations of the deep models, *'a'* are these final activations, and
&phi;(x) are the cross product transformations of the original features *'x'*.
Where &sigma; is the sigmoid function, *'W'* are the weight matrices applied to the wide model and to the final
activations of the deep models, *'a'* are these final activations,
&phi;(x) are the cross product transformations of the original features *'x'*, and
, and *'b'* is the bias term.
In case you are wondering what are *"cross product transformations"*, here is
a quote taken directly from the paper: *"For binary features, a cross-product
transformation (e.g., “AND(gender=female, language=en)”) is 1 if and only if
......@@ -296,7 +302,7 @@ pytest tests
### How to Contribute
Check [CONTRIBUTING](https://github.com/jrzaurin/pytorch-widedeep/CONTRIBUTING.MD) page.
Check [CONTRIBUTING](https://github.com/jrzaurin/pytorch-widedeep/blob/master/CONTRIBUTING.MD) page.
### Acknowledgments
......
Pytorch-widedeep is being developed and used by many active community members. Your help is very valuable to make it better for everyone.
- **[TBA]** Check for the [Roadmap](https://github.com/jrzaurin/pytorch-widedeep/projects/1) or [Open an issue](https://github.com/microsoft/jrzaurin/pytorch-widedeep/issues) to report problems or recommend new features and submit a draft pull requests, which will be changed to pull request after intial review
- Check for the [Roadmap](https://github.com/users/jrzaurin/projects/3) or [Open an issue](https://github.com/jrzaurin/pytorch-widedeep/issues) to report problems or recommend new features and submit a draft pull requests, which will be changed to pull request after intial review
- Contribute to the [tests](https://github.com/jrzaurin/pytorch-widedeep/tree/master/tests) to make it more reliable.
- Contribute to the [documentation](https://github.com/jrzaurin/pytorch-widedeep/tree/master/docs) to make it clearer for everyone.
- Contribute to the [examples](https://github.com/jrzaurin/pytorch-widedeep/tree/master/examples) to share your experience with other users.
......
......@@ -29,9 +29,9 @@ Pytorch
The content of this document is organized as follows:
- [pytorch-widedeep](#pytorch-widedeep)
- [**pytorch-widedeep**](#pytorch-widedeep)
- [Introduction](#introduction)
- [The deeptabular component](#the-deeptabular-component)
- [The ``deeptabular`` component](#the-deeptabular-component)
- [Acknowledgments](#acknowledgments)
### Introduction
......@@ -75,9 +75,10 @@ $$
Where $W$ are the weight matrices applied to the wide model and to the final
activations of the deep models, $a$ are these final activations, and
$\phi(x)$ are the cross product transformations of the original features $x$.
Where &sigma; is the sigmoid function, *'W'* are the weight matrices applied to the wide model and to the final
activations of the deep models, *'a'* are these final activations,
&phi;(x) are the cross product transformations of the original features *'x'*, and
, and *'b'* is the bias term.
In case you are wondering what are *"cross product transformations"*, here is
a quote taken directly from the paper: *"For binary features, a cross-product
transformation (e.g., “AND(gender=female, language=en)”) is 1 if and only if
......
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