Monetary construction of a rustic is a community of establishments corresponding to Banks, NBFCs, HFCs, Insurance coverage corporations, mutual funds and so forth. All of those are linked to one another as lenders or debtors. Whereas the interdependency helps channelize financial savings into investments, it might additionally set off danger occasions as seen in the course of the international monetary disaster in 2008. Indian monetary system additionally noticed failures of some monetary establishments within the latest previous corresponding to IL&FS, Sure Financial institution, PMC and so on. These failures didn’t result in cascading impact or systemic failure as a result of interconnectedness of Indian monetary establishments was inside its danger absorbing capability. Here’s a temporary have a look at the identical based mostly on RBI’s newest monetary stability report.
The time period interconnectedness in easy phrases means dependency of monetary establishments (FIs) on each other for funds. The dependency arises as segments corresponding to Insurance coverage companies (IFs) or mutual funds (MFs) obtain giant sum of cash however don’t have adequate avenues for deployment. Therefore, they lend to different monetary establishments corresponding to banks, NBFCs or HFCs (Housing Finance Corporations) who, finally, lend to personal debtors. Interconnectedness is a crucial parameter monitored by the regulator because it helps them establish ‘systemically’ essential monetary establishments, failure of which may have a cascading impact.
As per the FSR, whole bilateral publicity throughout completely different entities stood at Rs 61 lakh crore, up 16% from a 12 months in the past. Whereas the quantity appears large, it’s only 13% of the whole property managed by these entities. But, there may very well be increased dependence of some particular person entities and RBI retains fixed watch on them by means of common audit. Among the many FIs, MFs, IFs and public sector banks (PSBs) are the suppliers of funds whereas NBFCs, personal banks and HFCs are the recipients. The most important lender group is MF trade having lent Rs 14 lakh crore (internet) to different FIs on the finish of Sept’23. This corresponds to a pointy enhance of 33% from a 12 months in the past in opposition to 11% within the earlier 12 months, a results of important funds influx into MFs. (That is the online quantity. Gross lending is Rs 14.8 lakh crore whereas borrowings is Rs 0.8 lakh crore which implies a few of the MFs are wanting funds and have borrowed cash). The lent quantity constituted over 33% of their whole corpus, increased than 30% within the earlier 12 months. By way of their debtors, SCBs (scheduled industrial banks) are the most important accounting for practically 60% whereas NBFCs obtained 20%.
IFs (insurance coverage) is the opposite funds surplus phase offering Rs 8.2 lakh crore, about 11% enhance over final 12 months. It might be famous that progress fee for IFs just isn’t large like MFs. Right here too, SCBs (scheduled industrial banks) are the most important debtors with 53% share and NBFCs with 30%. (A degree that involves thoughts is – is it probably to provide license to IFs to enter into lending enterprise to scale back the price of intermediation?). A distinction between IFs and MFs is that the previous has deployed near 57% of their funds on long run foundation in opposition to 20% by MFs. That is so as a result of money outflow for IFs is long term in nature not like MFs that are uncovered to quick time period redemption prospects. It might even be famous that share of long-term debt for MFs has come down sharply from 36% in Sept’20. MFs had confronted extreme redemption stress in March/April’20, on the onset of Covid-19, when RBI supplied them the much-needed liquidity. MFs, wiser after that have, have lowered their publicity to long term instrument although that provides higher return.
On the opposite facet of the lender-borrower equation are NBFCs and SCBs who’re within the core enterprise of lending. NBFCs are the most important debtors with borrowings of Rs 14.1 lakh crore, up 25% from a 12 months in the past. Though NBFCs are borrowing from MFs and IFs, their largest supply of funds is SCBs, which, in flip, is mobilizing funds from MFs and IFs. SCBs present 56% of NBFC’s whole borrowings. A query arises as to why MFs and IFs aren’t straight lending to NBFCs however parking increased quantity of funds with SCBs. That is so as a result of it helps them switch their danger to SCBs who’ve large stability sheet measurement and due to this fact, increased danger capability. SCBs have borrowed about Rs 12.7 lakh crore from MFs and IFs, whereas its publicity to NBFCs is Rs 6.7 lakh crore. NBFCs dependence on SCBs has additionally gone up from 40% in Sept’17 with drying up of funds from different sources after IL&FS fiasco. The composition of NBFCs’ borrowings has additionally modified considerably with share of economic papers (CP), an unsecured from of lending, rising from 3.4% in Sept’22 to 4.5% in Sept’23. CP’s share had fallen sharply from 13.1% in Sept’18. It seems the chance urge for food of the market is returning.
HFCs is the opposite largest group, borrowing Rs 5.1 lakh crore. The determine is down by 28% over final 12 months, a results of the merger of HDFC Ltd, the most important HFC, with HDFC financial institution. But, this accounts for nearly half of whole property for HFCs indicating their large dependency on different segments for funds. Even for HFC, SCBs are the largest supply of funds accounting for 55% of their borrowings with MFs’ share declining through the years. This suggests increased recourse to longer-term funds which helps cut back liquidity danger. Share of CPs for HFCs additionally has come down from 18.4% in June’18 to 10.4% by Sept’19 and 4.6% now. Monetary system additionally consists of UCBs (city cooperative banks), AIFIs (All India Monetary establishments), PFs (Provident funds) and so on however their publicity out there is marginal.
Aside from dealings with different FIs, banks additionally lend/borrow amongst themselves in inter-bank market. Whole publicity within the inter-bank market stood at Rs 8.5 lakh crore in Sept’23, up by about 20% from a 12 months in the past. Whereas the transaction throughout the monetary market is basically long-term based mostly, in inter-bank market, 70% of publicity is short-term in nature. That is largely required to satisfy mismatch in asset-liability. In inter-bank market, PSBs are the first lenders whereas personal banks are internet debtors. Non-public sector banks borrowings have elevated sharply to over Rs 10 lakh crore, up virtually 60% over final 12 months. Whereas international banks (FBs) have a internet zero place within the inter-bank market, there share in whole market is 13%. This implies one set of FBs is money surplus and lending whereas one other set is money deficit and borrowing.
As a p.c of whole banking property, inter-bank market measurement has declined from 9.5% in March’13 to six.2% in March’17 and three.3% now. This implies higher asset-liability administration throughout banks, lesser scramble for short-term funds and extra accountable banking. It might be famous that international inter-bank publicity had crossed 20% in 2007 as per an IMF paper earlier than the worldwide monetary disaster erupted. Sudden freezing of funds within the inter-bank market was among the many causes of collapse of a number of banks that point.
Aside from the quantitative measure, diploma of interconnectedness can be measured by qualitative measure corresponding to connectivity ratio and cluster coefficient. Connectivity ratio refers to variety of linkages (lending or borrowing) amongst banks in opposition to whole variety of potential hyperlinks. As an example, most potential hyperlink amongst a gaggle of 5 banks could be 10. (The mathematical time period, 5C2). If two of the banks have borrowed from one financial institution and one different financial institution has borrowed from two banks, then the ratio could be 4/10 or 40%.
Cluster coefficient refers to connectivity inside a gaggle of banks the place one financial institution is dominant. This provides a sign of the vulnerability of the group as a complete. As an example, if financial institution A has lent to B, C & D and if B, C & D have additionally lent to/ borrowed from one another, then the cluster coefficient of the cluster comprising of A, B, C & D is excessive. This, most certainly, implies that one in every of these banks is borrowing not for its personal wants but in addition to lend to a different throughout the group. (As an example, financial institution B will get funds from Financial institution A as much as a restrict which isn’t adequate for its wants. It, due to this fact, borrows from financial institution C, which, in flip, borrows from Financial institution A).
For Indian banking trade, connectivity ratio stands at 18.3%, identical as final 12 months however down from about 25% in March’15. This roughly means, out of a gaggle of 5 banks, lower than two banks have borrowed and from just one financial institution. (Or one financial institution has borrowed from two banks). As per the IMF paper, connectivity ratio throughout international banks had gone as much as as excessive as 79% earlier than 2008 disaster which implies banks had been borrowing not for its personal want by for onward lending to realize from rate of interest arbitrage. Cluster coefficient stands at 41.3%, once more, identical as final 12 months. The coefficient has been largely fixed within the vary of 40-42% over final 5-6 years.
Word from FSR – The diagrammatic illustration of the community of the banking system is that of a tiered construction, during which completely different banks have completely different levels or ranges of connectivity with others within the community. Essentially the most linked banks are within the inner-most core (on the centre of the community diagram). Banks are then positioned within the mid-core, outer core and the periphery (concentric circles across the centre within the diagram), based mostly on their stage of relative connectivity. The color coding of the hyperlinks within the tiered community diagram represents borrowings from completely different tiers within the community (for instance, the inexperienced hyperlinks signify borrowings from the banks within the inside core). Every ball represents a financial institution and they’re weighted in response to their internet positions vis-à-vis all different banks within the system. The strains linking every financial institution are weighted on the premise of excellent exposures.