Topic Modeling
Latent topics (LDA / NMF / LSA): top terms, coherence, document-topic weights.
The Topic Modeling widget.
Overview
Discovers latent topics in a text field (Abstract, Title, or their combination) using LDA, NMF or LSA. Reports the top terms per topic with a per-topic coherence score, and the per-document topic-weight matrix. A static, whole-corpus complement to Dynamic Topic Models (over time) and to Document Clustering (hard clusters).
Inputs
Data (
Table) — data with a text field.
Outputs
Topic Terms (
Table) — Topic / Term / Weight.Document Topics (
Table) — per-document topic weights.Topic Summary (
Table) — one row per topic (top terms + coherence).
Controls
Text — the text source (Abstract / Title / Title+Abstract / Author Keywords).
Model — LDA, NMF or LSA.
Topics (0 = auto) — fix the number of topics, or 0 to choose automatically up to the cap.
Max topics (auto) — the upper bound when auto-selecting.
Top terms shown — number of terms listed/plotted per topic.
Topic (View) — which topic’s top-term bar chart to display.
Actions: Run.