Skip to main content

Announcing the MakCorps Hotel Review Data API

It’s been a long time since the launch of MakCorps Reputation in 2016. We set out to create a powerful and intuitive online reputation management solution and are proud to call many hotels all over the world our customers.
Expanding internationally isn’t always easy. The amount of reviews to analyze is rising exponentially and we are constantly adding new review sources. To be able to keep up with the growth we build a pretty advanced platform to capture, analyze and process thousands of reviews every day.
We are very excited to announce that from now on you can access this platform via the MakCorps Review Data API to enhance or even build your own application with review data from millions of travelers.

Incorporate Review Data

There are almost no limitations to how this data can be employed. It can be turned into a report on performance of a single hotel or whole country, it can power a reputation management solution or increase conversion on a hotel deal site.

What is accessible?

  • Millions of analyzed reviews from more than 100 websites for hotels worldwide
  • Aggregated ratings on topics like location, cleanliness and many more
  • Sentiment analysis on topics mentioned in the written review text
  • Historical data for the past years
  • Our own scientifically backed hotel quality indicator, the Guest Experience Index

This data can answer questions like…

  • What influence did the renovation of the rooms have on the hotel’s ratings?
  • Are the luxury hotels of London as good as the ones in Paris?
  • Which is the best neighbourhood of Amsterdam to book a hotel in?
The answer to the last one you can find on the map below we put together in less than an hour.

If you interested in the API and want to learn more or contact us please visit our dedicated page.

Comments

Popular posts from this blog

30 Amazing Machine Learning Projects for the Past Year (v.2018)

For the past year, we’ve compared nearly 8,800 open source Machine Learning projects to pick Top 30 (0.3% chance). This is an extremely competitive list and it carefully picks the best open source Machine Learning libraries, datasets and apps published between January and December 2017. Mybridge AI evaluates the quality by considering popularity, engagement and recency. To give you an idea about the quality, the average number of Github stars is 3,558.
Do visit our Hotel price comparison api which compares more than 200 hotel websites to get you the best possible price of your dream hotel.
Python Projects of the Year (avg. 3,707 ⭐️): Here(0 duplicate)Learn Machine Learning from Top Articles for the Past Year: Here(0 duplicate) Open source projects can be useful for data scientists. You can learn by reading the source code and build something on top of the existing projects. Give a plenty of time to play around with Machine Learning projects you may have missed for the past year…

Cheat Sheets for AI, Neural Networks, Machine Learning, Deep Learning & Big Data

Over the past few months, I have been collecting AI cheat sheets. From time to time I share them with friends and colleagues and recently I have been getting asked a lot, so I decided to organize and share the entire collection. To make things more interesting and give context, I added descriptions and/or excerpts for each major topic. This is the most complete list and the Big-O is at the very end, enjoy… If you like this list, you can let me know here Neural Networks

Neural Networks Cheat Sheet Neural Networks Graphs

Neural Networks Graphs Cheat Sheet



Neural Network Cheat Sheet Ultimate Guide to Leveraging NLP & Machine Learning for your Chatbot
Code Snippets and Github Includedchatbotslife.com
Machine Learning Overview

Machine Learning Cheat Sheet
Machine Learning: Scikit-learn algorithm This machine learning cheat sheet will help you find the right estimator for the job which is the most difficult part. The flowchart will help you check the documentation and rough guide of …

Building a Game using JavaScript : Part-1

Introduction I really wanted to write a tutorial about a game technology I like to use, so here it is. In this story, we will start making a little shoot’em up game with PixiJS, a really simple and cool Javascript library. What we are going to do exactly is to make a spaceship able to move and shoot, enemy waves coming through and a beautiful animated background with moving clouds. The first part (this story) will focus on the background. Ready guys? Let’s nail it! Getting started Let’s start by setting up our project: I uploaded a code structure already set so we are all working with the same base. However if you want to make it yourself, I put a picture of my folder just below: Click here to download the starter project Project folder structure We will need a local server to run the game: I invite you to download WAMP if you’re working with Windows, or MAMP for macOS, they are free and easy to use. Let’s put your game folder in the server one (htdocs for MAMP / www for WAM…