A survey of human-in-the-loop for machine learning
Abstract Machine learning has become the state-of-the-art technique for many tasks
including computer vision, natural language processing, speech processing tasks, etc …
including computer vision, natural language processing, speech processing tasks, etc …
A systematic review of the use of topic models for short text social media analysis
Recently, research on short text topic models has addressed the challenges of social media
datasets. These models are typically evaluated using automated measures. However, recent …
datasets. These models are typically evaluated using automated measures. However, recent …
Trends and trajectories for explainable, accountable and intelligible systems: An hci research agenda
Advances in artificial intelligence, sensors and big data management have far-reaching
societal impacts. As these systems augment our everyday lives, it becomes increasing-ly …
societal impacts. As these systems augment our everyday lives, it becomes increasing-ly …
Retainvis: Visual analytics with interpretable and interactive recurrent neural networks on electronic medical records
We have recently seen many successful applications of recurrent neural networks (RNNs)
on electronic medical records (EMRs), which contain histories of patients' diagnoses …
on electronic medical records (EMRs), which contain histories of patients' diagnoses …
What can ai do for me? evaluating machine learning interpretations in cooperative play
Machine learning is an important tool for decision making, but its ethical and responsible
application requires rigorous vetting of its interpretability and utility: an understudied …
application requires rigorous vetting of its interpretability and utility: an understudied …
Putting humans in the natural language processing loop: A survey
How can we design Natural Language Processing (NLP) systems that learn from human
feedback? There is a growing research body of Human-in-the-loop (HITL) NLP frameworks …
feedback? There is a growing research body of Human-in-the-loop (HITL) NLP frameworks …
[BOEK][B] Psychological foundations of explainability and interpretability in artificial intelligence
DA Broniatowski, DA Broniatowski - 2021 - tsapps.nist.gov
In this paper, we make the case that interpretability and explainability are distinct
requirements for machine learning systems. To make this case, we provide an overview of …
requirements for machine learning systems. To make this case, we provide an overview of …
A review of stability in topic modeling: Metrics for assessing and techniques for improving stability
Topic modeling includes a variety of machine learning techniques for identifying latent
themes in a corpus of documents. Generating an exact solution (ie, finding global optimum) …
themes in a corpus of documents. Generating an exact solution (ie, finding global optimum) …
The HaLLMark Effect: Supporting Provenance and Transparent Use of Large Language Models in Writing with Interactive Visualization
The use of Large Language Models (LLMs) for writing has sparked controversy both among
readers and writers. On one hand, writers are concerned that LLMs will deprive them of …
readers and writers. On one hand, writers are concerned that LLMs will deprive them of …
Closing the loop: User-centered design and evaluation of a human-in-the-loop topic modeling system
Human-in-the-loop topic modeling allows users to guide the creation of topic models and to
improve model quality without having to be experts in topic modeling algorithms. Prior work …
improve model quality without having to be experts in topic modeling algorithms. Prior work …