Methodology Reference · Macro Dashboards
A weekly read on how loose or tight Korean financial conditions are — built from seven market series, reported as two complementary indices. Lower always means looser.
01
Both indices use the same seven components, the same signs, and the same category weights. They differ in one thing only: whether each series is standardized against a fixed historical base or a rolling window.
FCI — LEVEL
Weighted sum of component levels, standardized on a frozen 2010s base and anchored so the base-period average = 100. Preserves secular drift.
▸ "How loose/tight vs ~20 years of history?"
FCI — MOMENTUM
Identical construction, but moments come from a trailing 52-week window. Detrended, centred near zero.
▸ "Have conditions tightened vs the last year?"
02
Seven series in five categories. The sign encodes a
growth-impulse convention: +1 means a higher value tightens
conditions (raises the index); −1 means a higher value loosens
them (lowers it).
| Series | Category | Cat wt | Sub wt | Sign | Higher value → |
|---|---|---|---|---|---|
| REER (BIS broad) | FX | 0.25 | 1.00 | +1 | stronger won → tighter |
| KOSPI trend gap (200d) | Equity | 0.25 | 0.50 | −1 | above trend → looser |
| KOSPI realised vol (21d) | Equity | 0.25 | 0.50 | +1 | higher vol → tighter |
| Spread AA − KTB 3Y | Credit | 0.20 | 0.50 | +1 | wider → tighter |
| Quality spread BBB − AA | Credit | 0.20 | 0.50 | +1 | wider → tighter |
| KTB 10Y yield | Rates | 0.20 | 1.00 | +1 | higher → tighter |
| Resid. property YoY | Housing | 0.10 | 1.00 | −1 | faster → looser |
Category weights sum to 1.00; sub-weights sum to 1.00 within each category.
03
Each raw series is signed and standardized to zero mean, unit variance:
x_i,t = sign_i × ( X_i,t − μ_i ) / σ_i
The moments (μ, σ) are the only switch between the two indices —
a frozen 2010–2019 base for the Level, a trailing 52-week window for
Momentum.
Multi-series categories (Equity, Credit) are combined by sub-weight, then re-standardized to unit variance — without this step, averaging correlated sub-series shrinks the category's variance and silently under-weights it.
equity = standardize( 0.5·x_gap + 0.5·x_vol ) credit = standardize( 0.5·x_aa_ktb + 0.5·x_bbb_aa )
C_t = 0.25·FX + 0.25·Equity + 0.20·Credit + 0.20·Rates + 0.10·Housing
Level : FCI = 100 + (1 / SD_base(C)) × C_t Momentum : FCI = C_t (rolling moments)
For the Level, one index point ≈ one standard deviation of the composite, so
97 is ~3 SD looser than the 2010s normal and 103 ~3
SD tighter. Master frequency is weekly (Friday); daily series
are sampled last-obs, monthly series forward-filled with no interpolation.
04
Signs follow the logic that asset-price strength is stimulative — the same framing Goldman uses. This is a deliberate choice; it makes the index a read on the growth impulse from conditions, not a froth/stress gauge.
05
06
The Level index is built on the methodology Goldman set out in Our New G10 Financial Conditions Indices (Goldman Sachs Global Economics, 2017): a weighted average of a short rate, a long-term yield, a credit spread, an equity-price variable and a trade-weighted exchange rate, with weights reflecting each variable's estimated effect on GDP growth over a one-year horizon.
This index departs from Goldman in one deliberate way: it adds a KOSPI realised-volatility overlay that Goldman's construction lacks. When an equity melt-up also spikes volatility, the Equity category nets toward neutral here rather than registering as pure easing. That is why this Level can read meaningfully less loose than the published GSKRFCI during a vol-heavy rally — the divergence localises to the equity channel by design.
07
The authoritative history is a Bloomberg export. For the weekly run, the tail is extended to the latest date from free sources, level-matched onto the Bloomberg series:
^KS11RBKRBIS (BIS broad)Published weekly, Friday morning (SGT), to Discord with an auto-generated commentary.
08
09
Goldman Sachs Global Economics. Our New G10 Financial Conditions Indices, Global Economics Analyst, 20 April 2017. gspublishing.com
Bank for International Settlements. Effective exchange rate indices (REER, broad) and residential property price statistics.
Bank of Korea. Economic Statistics System (ECOS) — market interest rates and consumer price index.