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In addition to lending frequency, we are also interested in the effects
of motivation categories and team affiliation on the amount
lent. However, to protect lender privacy, individual loan amount is
not available through Kiva data API. Therefore, for this analysis,
we employ a proxy variable for the amount lent. We know the list
of projects that each lender lends to, as well as the total amount
lent to each project. We therefore assume that each lender to a
project lends an equal amount. Once we apply this assumption to
all projects, we have a proxy for the total amount lent by each user.
Table 9 presents four OLS regressions using the proxy lending
amount as the dependent variable. Independent variables in each
regression are the same as those in Table 8. While the significance
and direction of motivation categories and team effects remain the
same as those in Table 8, it is informative to highlight the size of
some of these effects. Specifically, a lender motivated by general or
group-specific altruism lends $6 less per month than others, while
those motivated by external reasons lend approximately $7 less. By
contrast, a lender who sees Kiva as an effective development tool
lends $5 more per month, while one motivated by religious duty
lends $9 more. Again, when controlling for team affiliation (column
2), we find that a lender belonging to any team(s) lends $31
more per month than those without any team affiliation, while each
additional team joined is associated with $16 more lent per month.
Overall, the effects of motivation categories and team affiliation on
amount lent is consistent with those on lending frequency.