Toward the future of causal ML
In this section, we’ll briefly explore some possible future directions for causality from business, application, and research point of views. As always when talking about the future, this is somewhat of a gamble, especially in the second part of this section where we will discuss more advanced ideas.
Let’s start our journey into the future from where we’re currently standing.
Where are we now and where are we heading?
With an average of 3.2 new papers published on arXiv every day in 2022, causal inference has exploded in popularity, attracting a large amount of talent and interest from top researchers and institutions, including industry giants such as Amazon or Microsoft.
At the same time, for many organizations, causal methods are much less accessible than traditional statistical and machine learning techniques. This state of affairs is likely driven by a strong focus of educational system on associational methods when...