MIM Solutions
MIM Solutions is a company originated in University of Warsaw (UW) Algorithms Group, directed by prof. The company gathered experts interested in solving practical algorithmic problems efficiently, which finally evolved towards machine learning. Although the MIM Solutions is a company which is not a part of UW, these two entities are still in tight cooperation. MIM Solutions specializes in hard ta
29/09/2022
We got awarded with Rookie of the Year!
We are excited to announce that we were chosen one out of ten of the most promising start-ups by My Company Polska magazine, Amazon Web Services (AWS) and Vestbee. Thank you for believing in us and in our ideas!
15/08/2022
As August reached its midpoint, it's time to recap the most important , , and news from the past weeks!
This time, we listed articles from such sources as ScienceDaily, MIT, AINews, TechXplore, and Femtech Insider.
1⃣ Major step forward in fabricating an artificial heart, fit for a human: https://www.sciencedaily.com/releases/2022/07/220708123626.htm
2⃣ AI model recommends personalized fonts to improve digital reading, accessibility: https://techxplore.com/news/2022-08-ai-personalized-fonts-digital-accessibility.html
3⃣ This week's femtech news: https://femtechinsider.com/newsletter-20220811/
4⃣ US federal court upholds ruling that AIs cannot patent inventions: https://www.artificialintelligence-news.com/2022/08/08/us-federal-court-upholds-ruling-ais-cannot-patent-inventions/
5⃣ New algorithm aces university math course questions: https://news.mit.edu/2022/machine-learning-university-math-0803
21/07/2022
It's time to check MIM Solution's work from the inside!
When obtaining information from our clients, we often receive access to data consisting only of positive events, e.g., a list of items purchased by each user or clicked ads.
Many models need not only positive but also negative events to be able to estimate the probability of a positive event correctly.
These could be items not bought by a user during his visit to the store (despite having a chance to buy them) or that the user saw but did not click on. In some projects, there are so many negative events that processing all of them is too time-consuming. In such situations, we use negative event sampling, i.e., selecting a random subset of all potentially available negative events.
In this strategy of building a training set, you have to watch out for several traps:
• It is essential to avoid selecting a negative event with an identical positive event.
• You have to draw from the complete set of available negative events but avoid, for example, contradictory data to be added to the training set, e.g., the purchase of a product that is unavailable on a given day or a purchase from a brick-and-mortar store that was closed that day.
• When distinguishing good product recommendations from average product recommendations, you should include good and average recommendations in the training set in the randomly selected events, not good and bad ones. We used this strategy on the occasion of the Recsys 2016 competition:https://arxiv.org/pdf/1612.00959.pdf
If model predictions are used as accurate probability estimates, for example, to calculate expected revenue from an ad impression, the model predictions need to be recalibrated.
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Kategoria
Strona Internetowa
Adres
Wawelska 78/22
Warsaw
02-034