Goal-driven Command Recommendations for Analysts
Samarth Aggarwal, Rohin Garg, Abhilasha Sancheti, Bhanu Prakash Reddy, Guda, Iftikhar Ahamath Burhanuddin

TL;DR
This paper presents a neural network framework for goal-driven command recommendations in data analytics software, leveraging unstructured log data to improve decision-making support.
Contribution
It introduces a novel sequence modeling approach with a custom loss function and evaluation metric tailored for goal-oriented command recommendations.
Findings
Models outperform baselines in goal alignment
Proposed metrics effectively measure recommendation goal orientation
Robustness demonstrated against adversarial user activity
Abstract
Recent times have seen data analytics software applications become an integral part of the decision-making process of analysts. The users of these software applications generate a vast amount of unstructured log data. These logs contain clues to the user's goals, which traditional recommender systems may find difficult to model implicitly from the log data. With this assumption, we would like to assist the analytics process of a user through command recommendations. We categorize the commands into software and data categories based on their purpose to fulfill the task at hand. On the premise that the sequence of commands leading up to a data command is a good predictor of the latter, we design, develop, and validate various sequence modeling techniques. In this paper, we propose a framework to provide goal-driven data command recommendations to the user by leveraging unstructured logs.…
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