The Monetary “Black Box” in India Revisited: Nonlinear Transmission Across Yield Regimes
Abstract
1. Introduction
2. Literature Review
3. Materials and Methods
3.1. Research Design and Empirical Strategy
3.2. Identification of Monetary-Policy Shocks
3.3. Variable Definition and Measurement
3.4. Pre-Estimation Diagnostics
3.4.1. Unit-Root Tests
3.4.2. Structural Instability Test
3.5. Lag-Length Criteria
4. Results
4.1. GDP Threshold
4.1.1. GDP Model Nonlinearity
4.1.2. GDP Threshold Outcomes
4.1.3. Robustness Checks for the GDP Threshold Model
4.2. WPI Threshold
4.2.1. WPI Model Nonlinearity
4.2.2. WPI Threshold Outcomes
4.2.3. Robustness Checks for the WPI Threshold Model
5. Discussion
5.1. GDP Results
5.2. WPI Results
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Augmented Taylor Rule Framework
Variable Construction
| Variable | Definition | Transformation | Source |
|---|---|---|---|
| Weighted average call money rate, used as the operating target of monetary policy | Quarterly average/level | Reserve Bank of India, DBIE | |
| Output gap, measured as the cyclical component of real GDP | HP filter applied to log real GDP | RBI/national accounts data | |
| Inflation gap, defined as actual inflation minus target inflation | Actual inflation (CPI) minus target; pre-2016 target proxied by trailing moving average, post-2016 target fixed at 4% | Office of the Economic Adviser/CPI source/authors’ calculations | |
| Change in the real effective exchange rate | Quarter-on-quarter percentage change | Reserve Bank of India | |
| Monetary-policy innovation from the Taylor rule equation | Estimated residual | Authors’ calculations |
| Variable/Statistic | Value |
|---|---|
| Constant | 2.2138 *** |
| 0.6749 *** | |
| Inflation gap | −9.7837 |
| Output gap | 5.8435 ** |
| −0.2199 | |
| Observations | 118 |
| Sample | 1995Q1–2024Q2 |
| 0.5942 | |
| Adjusted | 0.5798 |
| F-statistic | 41.3621 *** |
| Durbin–Watson stat. | 2.1171 |
| Estimation | OLS with HAC (Newey–West) standard errors |
Appendix B. Augmented Dickey–Fuller Unit Root Test
| Specification | Statistic | DLGDP | GWPI | GASSETS | REER | WACR | TBILLS | MP_SHOCK | DGNFBC |
|---|---|---|---|---|---|---|---|---|---|
| Panel A. At Level | |||||||||
| With constant | t-statistic | −7.6819 | −4.1803 | −9.6149 | −1.4724 | −4.5856 | −3.7935 | −11.3845 | −16.2239 |
| Prob. | 0 | 0.0011 | 0 | 0.5444 | 0.0002 | 0.0040 | 0 | 0 | |
| Sig. | *** | *** | *** | No | *** | *** | *** | *** | |
| With constant & trend | t-statistic | −7.6884 | −4.2161 | −9.5765 | −4.6285 | −4.9624 | −3.6446 | −11.5172 | −16.1474 |
| Prob. | 0 | 0.0059 | 0 | 0.0015 | 0.0004 | 0.0306 | 0 | 0 | |
| Sig. | *** | *** | *** | *** | *** | ** | *** | *** | |
| Without constant & trend | t-statistic | −1.3075 | −4.1841 | −8.5955 | 0.5976 | −1.7907 | −1.5532 | −11.4338 | −16.3035 |
| Prob. | 0.1757 | 0 | 0 | 0.8442 | 0.0698 | 0.1127 | 0 | 0 | |
| Sig. | No | *** | *** | No | * | No | *** | *** | |
| Panel B. At First Difference | |||||||||
| With constant | t-statistic | −8.8253 | −7.8513 | −7.9209 | −10.1948 | −12.7032 | −12.7032 | −8.3690 | −8.3480 |
| Prob. | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | |
| Sig. | *** | *** | *** | *** | *** | *** | *** | *** | |
| With constant & trend | t-statistic | −8.7894 | −7.8210 | −7.9028 | −10.1695 | −12.6473 | −12.6640 | −8.2922 | −8.2950 |
| Prob. | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | |
| Sig. | *** | *** | *** | *** | *** | *** | *** | *** | |
| Without constant & trend | t-statistic | −8.8655 | −7.8916 | −7.9579 | −10.2009 | −12.7565 | −12.7512 | −8.4194 | −8.3923 |
| Prob. | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | |
| Sig. | *** | *** | *** | *** | *** | *** | *** | *** | |
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| Variable | Symbol | Role in Model | Measurement | Transformation |
|---|---|---|---|---|
| Real output growth | DLGDP | Dependent variable | Quarterly real GDP at constant 2011–12 prices | Log difference |
| Wholesale inflation | GWPI | Dependent variable | Quarterly Wholesale Price Index | Year-on-year growth rate |
| Operating rate | WACR | Monetary stance/GDP threshold | Quarterly weighted average call money rate | Level |
| Market-policy-expectation rate | TBILLS | Price threshold | Weighted average yield on 91-day Treasury bills | Level |
| Exchange-rate channel | REER | Proxy for the exchange-rate channel | Trade-weighted real effective exchange rate | Level |
| Asset-price channel | GASSETS | Proxy for the asset-price channel | Bombay Stock Exchange market capitalization | Growth rate |
| Credit channel | DGNFBC | Proxy for the bank-credit channel | Non-food bank credit | First difference of the growth rate |
| Variable | Preferred Specification | ADF t-Statistic | p-Value | Order of Integration/Decision |
|---|---|---|---|---|
| DLGDP | With constant | −7.682 | 0.0010 | I(0), stationary in the form used for estimation |
| GWPI | With constant | −4.180 | 0.0011 | I(0), stationary in the form used for estimation |
| GASSETS | With constant | −9.615 | 0.0010 | I(0), stationary in the form used for estimation |
| REER | With constant and trend | −4.628 | 0.0015 | Trend-stationary in the form used for estimation |
| WACR | With constant | −4.586 | 0.0002 | I(0), stationary in level |
| TBILLS | With constant | −3.794 | 0.0040 | I(0), stationary in level |
| MP_SHOCK | Without constant and trend | −11.434 | 0.0010 | I(0), stationary in the form used for estimation |
| DGNFBC | Without constant and trend | −16.304 | 0.0010 | I(0), stationary in the form used for estimation |
| Break Test | F-Statistic | Scaled F-Statistic | Critical Value (5%) | Decision |
|---|---|---|---|---|
| 0 vs. 1 | 93.113 | 465.563 | 18.23 | Reject null of no break |
| 1 vs. 2 | 8.405 | 42.025 | 19.91 | Reject null of one break |
| 2 vs. 3 | 11.672 | 58.359 | 20.99 | Reject null of two breaks |
| 3 vs. 4 | 5.384 | 26.921 | 21.71 | Reject null of three breaks |
| 4 vs. 5 | 0.000 | 0.000 | 22.37 | Fail to reject null of four breaks |
| Selected number of breaks: 4 | ||||
| Included observations: 110 | ||||
| Trimming parameter: 0.15 | ||||
| Maximum allowed breaks: 5 | ||||
| Estimated break dates (repartition): 2000Q3, 2009Q3, 2013Q4, 2019Q1 | ||||
| Evidence Block | Numerical Result | Interpretation | Specification Implication |
|---|---|---|---|
| VAR lag-order criteria (common sample, 102 observations) | AIC = at lag 3; FPE = at lag 3; HQ = at lag 3; LR = at lag 4; SC = at lag 1 | The unrestricted linear system supports medium-order dynamics centered on lags 3–4 rather than a one-quarter specification | Monetary-policy effects should be allowed to extend beyond the first quarter |
| VAR(4) LM test: individual lag h | p-values: lag 1 = 0.8141; lag 2 = 0.4448; lag 3 = 0.2595; lag 4 = 0.0002; lag 5 = 0.8843 | Residual dependence is not general; it is strongly concentrated at lag 4 | The policy shock block should retain the fourth lag |
| VAR(4) LM test: cumulative lags 1 to h | p-values: 0.8141; 0.0785; 0.0109; 0.0002; 0.0066 | Rejection strengthens once higher-order dependence accumulates, again around the annual quarterly horizon | Truncating policy shocks at one or two lags would risk omitting delayed effects |
| VAR(5) LM test: individual lag h | p-values: lag 1 = 0.0006; lag 2 = 0.0098; lag 3 = 0.1994; lag 4 = 0.0003; lag 5 = 0.0213 | Increasing all lags symmetrically does not resolve misspecification; lag 4 remains problematic | The solution is not to add long lag structures to every transmission channel |
| Threshold-model structure | Up to 2 thresholds and hence up to 3 regimes | A symmetric multi-lag specification would multiply regime-specific coefficients and weaken precision in smaller regimes | Keep the nonlinear model parsimonious |
| Final baseline choice | to ; channel variables at only | Rich lag depth is assigned where delayed effects are theoretically most credible while preserving tractability for regime-dependent estimation | Baseline specification adopted |
| Threshold Test | F-Statistic | Scaled F-Statistic | Critical Value (5%) | Decision |
|---|---|---|---|---|
| 0 vs. 1 threshold | 3.074 | 27.672 | 25.65 | Reject linearity |
| 1 vs. 2 thresholds | 6.860 | 61.745 | 27.66 | Reject one-threshold model |
| Estimated thresholds: 5.5867 and 7.7200 | ||||
| Threshold variable: WACR | ||||
| Variable | Low-Rate Regime | Intermediate-Rate Regime | High-Rate Regime |
|---|---|---|---|
| (WACR < 5.5867) | (5.5867 ≤ WACR < 7.7200) | (WACR ≥ 7.7200) | |
| 34 Obs. | 46 Obs. | 28 Obs. | |
| DLGDP(-1) | *** | ||
| MP_SHOCK(-1) | *** | ** | |
| MP_SHOCK(-2) | *** | ** | |
| MP_SHOCK(-3) | * | * | |
| MP_SHOCK(-4) | * | ||
| GASSETS(-1) | ** | ** | |
| REER(-1) | |||
| DGNFBC(-1) | *** | ||
| C | |||
| Non-threshold variables | |||
| DWPI(-1) | |||
| DEFRED(-1) | |||
| Model statistics | |||
| R-squared | 0.5049 | ||
| Adjusted R-squared | 0.3295 | ||
| S.E. of regression | 0.0688 | ||
| F-statistic | 2.8778 | ||
| Prob(F-statistic) | 0.0001 | ||
| Durbin–Watson stat. | 2.1994 | ||
| Variable | Threshold Estimate | Ridge Coefficient | Direction Preserved? |
|---|---|---|---|
| (High-Rate Regime) | (λ = 1.9530) | ||
| DLGDP(-1) | 0.1265 | −0.0182 | No |
| MP_SHOCK(-1) | 0.0383 | 0.0085 | Yes |
| MP_SHOCK(-2) | 0.0072 | −0.0040 | No |
| MP_SHOCK(-3) | 0.0242 | 0.0021 | Yes |
| MP_SHOCK(-4) | 0.0160 | 0.0018 | Yes |
| GASSETS(-1) | −0.2402 | −0.0472 | Yes |
| REER(-1) | 0.0002 | −0.0002 | No |
| DGNFBC(-1) | 0.3491 | 0.3168 | Yes |
| Constant | −0.0257 | 0.0449 | No |
| Model summary | |||
| Sample | 1993Q1–2024Q2, conditional on | ||
| Included observations | 28 | ||
| Penalty type | Ridge | ||
| Alpha | 0 | ||
| Lambda at minimum MSE | 1.9530 | ||
| Cross-validation | 3-fold | ||
| R-squared | 0.309 | ||
| Null Hypothesis | F-Statistic | Scaled F-Statistic | 5% Critical Value | Decision |
|---|---|---|---|---|
| 0 vs. 1 threshold | 34.06 | 306.62 | 25.65 | Reject linearity |
| 1 vs. 2 thresholds | 4.07 | 36.67 | 27.66 | Reject one-threshold model |
| Estimated thresholds: 5.041 and 7.5952 | ||||
| Threshold variable: TBILLS | ||||
| Variable | Low-Yield Regime | Intermediate-Yield Regime | High-Yield Regime |
|---|---|---|---|
| (TBILLS < 5.0408) | (5.0408 ≤ TBILLS < 7.5952) | (TBILLS ≥ 7.5952) | |
| 19 Obs. | 59 Obs. | 30 Obs. | |
| GWPI(-1) | *** | ||
| MP_SHOCK(-1) | * | ||
| MP_SHOCK(-2) | *** | ** | * |
| MP_SHOCK(-3) | *** | ||
| MP_SHOCK(-4) | *** | ||
| GASSETS(-1) | |||
| REER(-1) | ** | ||
| DGNFBC(-1) | |||
| Constant | ** | ||
| Non-threshold variables | |||
| DGDP(-1) | |||
| DEFRED(-1) | |||
| Model statistics | |||
| R-squared | 0.4687 | ||
| Adjusted R-squared | 0.2804 | ||
| S.E. of regression | 0.0175 | ||
| F-statistic | 2.4890 | ||
| Prob(F-statistic) | 0.0008 | ||
| Durbin–Watson statistic | 2.2060 | ||
| Variable | Threshold Estimate | Ridge Coefficient | Direction Preserved? |
|---|---|---|---|
| (Low-Yield Regime) | (λ = 0.57) | ||
| GWPI(-1) | −0.0317 | −0.0097 | Yes |
| MP_SHOCK(-1) | −0.0007 | 0.0013 | No |
| MP_SHOCK(-2) | 0.0342 | 0.0093 | Yes |
| MP_SHOCK(-3) | 0.0252 | 0.0041 | Yes |
| MP_SHOCK(-4) | 0.0575 | 0.0113 | Yes |
| GASSETS(-1) | 0.0057 | −0.0370 | No |
| REER(-1) | 0.0007 | 0.0003 | Yes |
| DGNFBC(-1) | −0.2417 | −0.0415 | Yes |
| Constant | −0.0034 | −0.0013 | Yes |
| Model summary | |||
| Sample | 1993Q1–2024Q2, conditional on | ||
| Included observations | 19 | ||
| Penalty type | Ridge | ||
| Alpha | 0 | ||
| Lambda at minimum MSE | 0.57 | ||
| Cross-validation | 3-fold | ||
| R-squared | 0.4178 | ||
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Share and Cite
Mostafa, H.; Arumugasamy, D.; Ashokan, N. The Monetary “Black Box” in India Revisited: Nonlinear Transmission Across Yield Regimes. Economies 2026, 14, 152. https://doi.org/10.3390/economies14050152
Mostafa H, Arumugasamy D, Ashokan N. The Monetary “Black Box” in India Revisited: Nonlinear Transmission Across Yield Regimes. Economies. 2026; 14(5):152. https://doi.org/10.3390/economies14050152
Chicago/Turabian StyleMostafa, Husam, Duraisamy Arumugasamy, and Nisha Ashokan. 2026. "The Monetary “Black Box” in India Revisited: Nonlinear Transmission Across Yield Regimes" Economies 14, no. 5: 152. https://doi.org/10.3390/economies14050152
APA StyleMostafa, H., Arumugasamy, D., & Ashokan, N. (2026). The Monetary “Black Box” in India Revisited: Nonlinear Transmission Across Yield Regimes. Economies, 14(5), 152. https://doi.org/10.3390/economies14050152

