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RAMEN RATINGS: The Artometrics of Ramen Ratings

This report analyzes the TidyTuesday 2019-06-04 release on Ramen Ratings — 3,180 rows after cleaning and merge.

Artometrics Editorial5 min read
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RAMEN RATINGS: The Artometrics of Ramen Ratings
This report analyzes the TidyTuesday 2019-06-04 release on Ramen Ratings — 3,180 rows after cleaning and merge.

This report analyzes the TidyTuesday 2019-06-04 release on Ramen Ratings3,180 rows after cleaning and merge. Which ramen brands earn the stars — and where do they come from?

Five charts track Stars across time, category, and named entities — trend, leaders, distribution, tiers, and relationships. Where companion files exist in the repo, they are joined before analysis so reception, geography, or metadata columns are not left on the table.

FAST FACTS

3,180Records in the working dataset
3.75Median Stars
5.00Highest observed Stars
NongshimTop Brand by Stars
JapanMost common Country

DATASET CONTEXT

The source is the TidyTuesday release from 2019-06-04 (R for Data Science community). This working file contains 3,180 rows and 6 columns after merging all available CSV/XLSX tables in the week folder.

Charts are exported as Plotly JSON with PNG fallbacks. Medians are used for robustness where distributions skew. Index-style fields (row numbers, sequential IDs) are excluded from metric selection.

How to read this report: start with the chart caption, then ask what the metric actually means, what a non-expert should notice first, and what an expert would challenge in the source. The goal is not to memorize every number; it is to leave with a sharper question than the one you arrived with.

Reader path: if you are new to the topic, treat each chart as a guided tour of one question: who leads, how concentrated the field is, what changes over time, and where the outliers sit. If you already know the domain, use the same charts as a challenge: check whether the metric is the right proxy, whether the source omits an important population, and whether the headline survives the limitations section.

CHART 1 — BREAKDOWN

Stars by Brand

TTL leads at 5.00; Tseng Noodles anchors the low end at 5.00.

Grouping by brand exposes how the metric varies across the catalog's major entities.

CHART 2 — LEADERS

TTL leads at 5.00 — 5.00 marks the median among the top dozen

TTL leads at 5.005.00 marks the median among the top dozen.

Head-of-field concentration is where quality, scale, or brand visibly separates from the pack.

CHART 3 — DISTRIBUTION

Stars by Country

Category boxes reveal whether stars consensus is shared or contested across tiers.

Wide whiskers flag segments where outliers — not averages — drive reputation.

CHART 4 — GAP ANALYSIS

Stars vs median by Country

Malaysia sits 0.50 above the median; Thailand trails by 0.25.

Diverging from the median exposes which tiers over- or under-perform — not just who ranks first.

SUPPLEMENT — RELATIONSHIP

Stars vs Review number

Joint plot of stars and review number surfaces clusters the averages erase.

Bubble size tracks repeat presence — outliers are archetypes, not noise.

LIMITATIONS

Community-cleaned TidyTuesday snapshots are not live APIs. Missing values, spelling variants, and week-of-export coverage limits apply. Merged tables may fan out or duplicate rows when join keys are imperfect.

Findings describe the file on hand — treat them as structural signals about Ramen Ratings, not exhaustive truth about the full domain.

CONCLUSION

Read as a teaching map, Ramen Ratings shows why one metric is rarely enough: leaders, tails, trends, and relationships each answer a different question about stars.

The best reading is modest: use the chart to sharpen the question, then check the source and limits before turning it into a claim.

REFERENCES

Data Science Learning Community. (2019). TidyTuesday: Ramen Ratings. https://raw.githubusercontent.com/rfordatascience/tidytuesday/main/data/2019/2019-06-04/ramen_ratings.csv

EDITOR'S NOTE

Artometrics data report from the TidyTuesday research pipeline. Charts and aggregates are reproducible from the embedded exhibits and public source files.

View TidyTuesday source on GitHub