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doc-id="BDED7DAD-CE4E-4844-9E31-B7C5DD5C8505" version-id="04D3FFD6-CA55-47FF-82B1-0760CC2858BB" branch-id="00000000-0000-0000-0000-000000000000" revision-num="348503436" is-modified="false" region-id="0" href="D:\economic\Conferences\2009\WoolleyFinancialDysfunctionality\SampleModels02.xmcd" xmlns="http://schemas.mathsoft.com/provenance10"> <hash/> </originRef> <parentRef doc-id="BDED7DAD-CE4E-4844-9E31-B7C5DD5C8505" version-id="04D3FFD6-CA55-47FF-82B1-0760CC2858BB" branch-id="00000000-0000-0000-0000-000000000000" revision-num="348503636" is-modified="false" region-id="0" href="D:\economic\Conferences\2009\WoolleyFinancialDysfunctionality\SampleModels02.xmcd" xmlns="http://schemas.mathsoft.com/provenance10"> <hash/> </parentRef> <comment xmlns="http://schemas.mathsoft.com/provenance10"/> <originComment xmlns="http://schemas.mathsoft.com/provenance10"/> <contentHash xmlns="http://schemas.mathsoft.com/provenance10">c67791b988e303afbcad96b2a31d37b2</contentHash> <ml:define> <ml:id 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subscript="W">τ</ml:id> </ml:apply> </ml:apply> </ml:parens> </ml:apply> </ml:apply> <ml:apply> <ml:neg/> <ml:apply> <ml:div/> <ml:id xml:space="preserve">W</ml:id> <ml:apply> <ml:mult/> <ml:id xml:space="preserve">a</ml:id> <ml:parens> <ml:apply> <ml:minus/> <ml:id xml:space="preserve">s</ml:id> <ml:real>1</ml:real> </ml:apply> </ml:parens> </ml:apply> </ml:apply> </ml:apply> </ml:matrix> </ml:symResult> </ml:symEval> </math> <rendering item-idref="33"/> </region> <region region-id="67" left="6" top="2102.25" width="322.5" height="12" align-x="15.75" align-y="2112" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="false"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">With a tad more manipulation we get a slightly more compact expression</p> </text> </region> <region 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