Analysis of E-commerce Ranking Signals via Signal Temporal Logic

01/14/2021
by   Tommaso Dreossi, et al.
0

The timed position of documents retrieved by learning to rank models can be seen as signals. Signals carry useful information such as drop or rise of documents over time or user behaviors. In this work, we propose to use the logic formalism called Signal Temporal Logic (STL) to characterize document behaviors in ranking accordingly to the specified formulas. Our analysis shows that interesting document behaviors can be easily formalized and detected thanks to STL formulas. We validate our idea on a dataset of 100K product signals. Through the presented framework, we uncover interesting patterns, such as cold start, warm start, spikes, and inspect how they affect our learning to ranks models.

READ FULL TEXT
research
07/25/2017

Integrating Lexical and Temporal Signals in Neural Ranking Models for Searching Social Media Streams

Time is an important relevance signal when searching streams of social m...
research
06/24/2019

A Logic-Based Learning Approach to Explore Diabetes Patient Behaviors

Type I Diabetes (T1D) is a chronic disease in which the body's ability t...
research
07/04/2022

Understanding Performance of Long-Document Ranking Models through Comprehensive Evaluation and Leaderboarding

We carry out a comprehensive evaluation of 13 recent models for ranking ...
research
04/16/2019

An Efficient Formula Synthesis Method with Past Signal Temporal Logic

In this work, we propose a novel method to find temporal properties that...
research
08/10/2022

Differentiable Inference of Temporal Logic Formulas

We demonstrate the first Recurrent Neural Network architecture for learn...
research
05/26/2023

Mitigating Exploitation Bias in Learning to Rank with an Uncertainty-aware Empirical Bayes Approach

Ranking is at the core of many artificial intelligence (AI) applications...

Please sign up or login with your details

Forgot password? Click here to reset