Elasticsearch Learning to Rank—Search as a Machine Learning Problem


Details
SPECIAL: This month we are moving the presentation to Thursday because we have a special guest who will be in town giving a training class for techfrederick: https://techfrederick.org/relevance_engineer/
Doug Turnbull, co-author of the book Relevant Search will be in town for a techfrederick training and has offered to give a talk on treating search as a Machine Learning Problem.
/* Tonight's Presentation Summary: */
Search relevance is how questions are answered through search. It's the process of changing the ranking of search results for a user query to return what users want. A search for 'iPhone XS' should rank documents highly when the product name matches. But a different query, 'smartphone with two cameras' would require a completely different strategy for ranking candidate results. What gives teams a headache is that all the diverse use cases for search must be handled by a single ranking algorithm.
This is where Learning to Rank comes in. We will discuss how search can be treated as a machine learning problem. 'Learning to Rank' takes the step to returning optimized results to users based on patterns in usage behavior. We will talk through where Learning to Rank has shined, as well as the limitations of a machine learning-based solution to improve search relevance.
/* Evening Schedule: */
• 6:30pm - Pizza will be served thanks to our special evening sponsor: HighGear! Low key, come hang out and chat.
• 7:00pm - We will begin the evening presentation.
• 8:30pm - Time to close up and leave.
/* Location Details: */
The meeting will take place at the downtown FITCI location at 118 N Market Street (next to Brewer's Alley). On-street parking is available and free at that time of the evening, or the large Church Street parking garage is directly behind the building and available at a nominal fee ($2)

Canceled
Elasticsearch Learning to Rank—Search as a Machine Learning Problem