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Case Study: Deposit Valuation Analysis - Using FHLBank Boston Advances to Efficiently Price Deposits

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Hey everybody. Welcome to part two

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of our case study around deposit valuations and how to leverage that information to make better

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funding decisions.

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Once again, I'm Sean Carraher, and I joined the Federal Home Loan Bank of Boston just a couple of

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months ago in May of 2022.

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I have over 20 years of experience in the industry, and I'm well versed in asset

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liability management.

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I've been the treasurer of two different multi-billion dollar banks in the immediate Boston

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area and have chaired ALCO groups, created and run funding and derivatives strategies, and created

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and managed profitability and risk frameworks.

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At the end of the first part of this case study around deposit valuation,

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we recognize the fact that we already have ALM metrics that are associated with the economic

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factors that create value for deposits.

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And, we can leverage those metrics to create a framework that will put a

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number against our deposits to actually use in different kinds of quantitative

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analysis.

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And so, very briefly, again, those economic attributes are the degree to which pricing will

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adjust, which is the beta.

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The speed with which pricing is going to adjust, which is the lag.

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The volatility of our balances,

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which is the decay rate.

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And the amount of time over which the deposit is expected to remain outstanding. And that's

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the average life.

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And the fact that our deposits have an opportunity benefit instead of an opportunity cost relative

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to other sources of funding because we'll be able to use those client relationships

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in other ways. 1:48

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So, how are we going to do this? How are we going to go about creating that framework that combines

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all those attributes?

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Well, first, we're going to take one of those pieces of intuition that we had in the first part

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of the case study and recognize the fact that not all accounts and not all deposit products

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behave the same.

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And so, we can bucket balances within a deposit product by a combination of the

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repricing behavior of that product and the volatility of that product.

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So, some balances are

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going to be really price sensitive, and some balances are not going to be price sensitive.

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Some accounts are going to be more volatile,

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and some accounts are going to be less volatile.

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We can use that information to start to create buckets of dollars, and assign … a percentage of

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that overall product to that bucket.

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Then we can look at each one of those buckets and create a term, that is a period of time,

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that's associated with that behavior.

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So, [if] something is not very price sensitive and it's not very volatile,

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then it probably has a very long life.

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And if

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something is really price sensitive or if it is really volatile, then it has a very short life.

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Then finally, we're going to add a premium to each one of these buckets to recognize

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the fact that, irrespective of the economic attributes of the bucket,

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it has an opportunity benefit

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relative to other sources of funding.

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A lynchpin in creating the framework for this deposit valuation methodology is the

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recognition of a hidden mathematical relationship that exists when we identify deposit betas.

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While we

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normally think of using deposit betas as being applied to all the balances in a product type,

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mathematically, we can theoretically divide the balances within a product type into two buckets:

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3:37 one bucket that is 100% price

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sensitive and one bucket that is 100%

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not sensitive, and the size of each one of those buckets is the

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beta.

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So, for example, if we had a money market account that we assumed had a 60% deposit beta,

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what we're actually mathematically saying is that 60% of the balances have 100% price sensitivity.

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And 40% of the balances

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have a 0% price sensitivity.

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And so, when you put those two buckets together, you create an overall sensitivity of 60%.

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But we can differentiate that into 2 pieces. One piece is really fully sensitive,

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and one piece is really not at all sensitive.

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Now, in reality, not every account is going to behave that way, not every account is fully

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sensitive or insensitive.

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But theoretically mathematically, we can create these two different buckets that sort of create

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a framework in which we can now start to think about differentiating different types of accounts.

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Deposit betas allowed us

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to break an undifferentiated mass of balances in a product type into two discrete buckets.

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If we introduce the concept of volatility,

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we can now start to break it into three different pockets,

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and if we think about what volatile balances would be, first off, if we remember from our

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first slide upfront, that every attribute, every economic attribute, has an associated ALM metric,

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we can recognize that the decay rate that

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we're using to build our eve or any eve modeling, it's essentially the volatility estimate,

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and we can also then take a step back and say OK, if a balance is volatile, how do I put that in the

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framework of deposit betas?

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Is it price sensitive or is it price insensitive?

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And I suspect you'd agree that a volatile balance is sort of, by definition, highly sensitive.

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And so,

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therefore, a volatile portion of our balances is going to come out of the price sensitive bucket.

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So, an example that's on the slide, we said,

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OK, there was going to be a 60% deposit beta, so 40% of our balances are price insensitive,

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and 60% were going to be price sensitive.

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Now, what if we assume that we have

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a 10% decay rate which is effectively asserting whether it's going to have a 10% average life.

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If there's a 10% decay rate on the

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product type, then 10% of the overall balance is both sensitive and volatile and now 50%,

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the 60% upfront minus the 10% volatility is now sensitive, but not volatile.

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That is, these balances are price sensitive,

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but they're not here today, gone tomorrow.

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The volatile balances are here today, gone tomorrow, and the non-volatile, price-insensitive

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balances, are going to stick around indefinitely.

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So, we've created three buckets just from two economic attributes: the beta and the volatility.

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And the volatility

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is the decay rate.

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We've created these three buckets based upon the price sensitivity and relative volatility

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of the balances within a product type.

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And so that insensitive non-volatile bucket,

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we can call that core fixed. It's funding that's not going to move around its core funding,

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and it's not price sensitive.

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The highly sensitive, highly volatile bucket, we can call non-core float because these balances are

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not core balances.

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They're balances that could be in flux and they're, they're price-sensitive balances.

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And then the in-between bucket

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are those balances that are core funding, they'll stick around but they'll stick around if we pan.

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And so that's sort of the

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in-between hybrid core-float piece.

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Now we set upfront in the framework that not only do we have to identify the different

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kinds of buckets or the size of the buckets within this framework based upon repricing

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and volatility characteristics, we have to put a term against each one of these.

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Remember, if we're going to value a bond,

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we need to know the cash flows, and we need to know how long those cash flows are going to last.

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Well, within this framework, if we have a piece

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of the puzzle, that's this core fixed bucket that isn't price sensitive, and isn't very volatile,

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it's not responding to price inputs and its behavior. It's only going to respond to life

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events, so to speak, within its behavior.

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So, the term of it is the average life. It's got a very long life associated with it.

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The non-core float, the really

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volatile price-sensitive piece, is assumed to have only an overnight value because those are balances

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that are here today and gone tomorrow.

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And then the in-between piece, the core float has a life that's the, that's the

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same as our lag term that we're using it and I'm modeling, that is to say those balances will stay

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so long as we pay him within some timeframe.

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And that timeframe doesn't have to be today or tomorrow.

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It could be two months,

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three months, six months, a year, but we're going to have to pay them to keep them happy.

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Upfront we identified that there were five economic attributes that created value

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for deposits, and we've used four of them.

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We figured out the price sensitivity, we figured out how quickly prices will change,

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we figured out volatility in average life, and we use the deposit beta

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to figure out the initial buckets and then we add in volatility to identify three different buckets.

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Then we tried to figure out the term by

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looking at average life and the lag terms.

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The last piece of the puzzle is the economic benefit.

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The opportunity benefit, having client deposits

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relative to wholesale funding in the first place.

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So, I think it's clear that client deposits do have value over wholesale funding sources.

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Typically, they're not collateralized.

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You can facilitate client

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development by using deposits, and they can reduce your capital and liquidity, liquidity requirements

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through regulatory perception.

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So how do we figure out the value of those deposits relative to wholesale funding sources?

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And this concept of term liquidity

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premium can accomplish that, and very simply, it's just the marginal cost of borrowing relative to

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the swap rate associated with the long term.

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So, an example that's on the slide and left-hand side.

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If we know that a 10-year advance is

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3.71%, and a tenure swap is 2.62%, the liquidity premium’s just the difference in those two things,

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which is 1.09%.

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That is to say, the marginal cost of locking in your liquidity of funding

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for your balance sheet is 109 basis points relative to just taking care of the interest-rate

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risk in a swap.

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So, that represents the value of having client liquidity versus wholesale

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funding.

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Let's walk through a couple of different examples about using this framework to value different

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types of accounts.

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So, on this slide, we're taking a look at an average sensitivity NOW

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account.

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And the key assumptions around that account, which could be taken or derived from the ALM modeling

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that you are already accomplishing,

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is identified in the light green up on the right-hand side.

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So, the rate paid on this

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account is 25 basis points.

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So, NOW account. So, it's got some beta, but it's not very high, 30%.

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The lag pricing assumption is that

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it won't reprice for six months.

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The decay rate’s 8%. 11:53

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It's got some fee revenue and servicing costs, and deposit insurance associated with it.

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And the deposit

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life in this tool is just assumed to be the inverse, the reciprocal of the decay rate.

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That's just a mathematical truism.

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So,

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given those assumption inputs, if you recall how we put together the framework,

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we know with a 30% beta that means there is a 70% core-fixed allocation.

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That is to say 70% of

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the balances in this account type are assumed to be not volatile and not price sensitive,

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while 30% are assumed to be some

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combination of volatile and price sensitive.

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And so, you see here that the non-core float is the same as the decay rate, 8%.

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So that's the percentage of balances

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that are assumed to be volatile

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because the decay rate is the amount of balances that are assumed to be gone within a year.

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And then the core float piece,

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the piece, the balances that are price sensitive, but not particularly volatile,

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that's 22% of the overall pie because if

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we pay those balances, they'll stick around.

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And then we know the term associated with each one of those things.

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The core fixed has a very long life,

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and that's this deposit life number of 12.5.

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And so, we look to the swap curve to figure out what's a 12.5-year swap worth. And it's worth

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266 in this example.

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The core float piece is basically, the pricing lag.

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And so, what would be a six-month

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rate. In this example, it's 284.

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And, again, those numbers may seem a little odd right now, but that's because the yield curve

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right now is inverted.

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Then, finally, the non-core float just gets an overnight rate, and as I record this,

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