: set of hyperlinked webpages
: webpages in P
: set of webpages pointing to u
: set of webpages that v points to
- the PageRank is:
(1.)
is chosen such that ![{\displaystyle \sum _{u\in P}R(u)=1}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/91d806de17a79321591098a9e9d9f97a1796f47b)
is a vector over
corresponding to a source of rank and is chosen such that ![{\displaystyle \sum _{u\in P}E(u)=0.15}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/651deafe60e4939b1a89763b3377b1009d6f51dc)
- first term of function (1.)
gives rank value based on initial rank
- second term of (1.)
gives rank value as a function of hyperlinks pointing at ![{\displaystyle u}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/c3e6bb763d22c20916ed4f0bb6bd49d7470cffd8)
Beta
Reputation Function
Let
and
represent the collective amount of positive and negative feedback about a Target T provided by an agent (or collection of agents) denoted by X, then the function
defined by
![{\displaystyle \varphi (p|r_{T}^{X},s_{T}^{X})={\frac {\Gamma (r_{T}^{X}+s_{T}^{X}+2)}{\Gamma (r_{T}^{X}+1)\Gamma (s_{T}^{X}+1)}}p^{r_{T}^{X}}(1-p)^{s_{T}^{X}},\qquad where\ 0\leq p\leq 1,\ 0\leq r_{T}^{X},\ 0\leq s_{T}^{X}}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/b0c006e2110cdf5b669bea3cd521b82249b8c45f)
is called T's reputation function by X. The tuple
will be called T's reputation parameters by X.
For simplicity
.
The probability expectation value of the reputation function can be expressed as:
![{\displaystyle E(\varphi (p|r_{T}^{X},s_{T}^{X}))={\frac {r_{T}^{X}+1}{r_{T}^{X}+s_{T}^{X}+2}}}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/d9276363f88941488f80b404c015ec9490ccabb1)
Reputation Rating
Let
and
represent the collective amount of positive and negative feedback about a Target T provided by an agent (or collection of agents) denoted by X, then the function
defined by
![{\displaystyle Rep(r_{T}^{X},s_{T}^{X})=(E(\varphi (p|r_{T}^{X},s_{T}^{X}))-0.5)\cdot 2={\frac {r_{T}^{X}-s_{T}^{X}}{r_{T}^{X}+s_{T}^{X}+2}}}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/ecc0b451445d3401ee1efd4d170d5937f907d7ed)
is called T's reputation rating by X. For simplicity ![{\displaystyle Rep_{T}^{X}=Rep(r_{T}^{X},s_{T}^{X})}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/f71ff95c843bd8aa8f58543cb6ac34031c7f6b34)
Combining Feedback
Let
an
be two different reputation functions on T resulting from X and Y's feedback respectively. The reputation function
defined by:
1. ![{\displaystyle r_{T}^{X,Y}=r_{T}^{X}+r_{T}^{Y}}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/eb8705ae83b11d105ab33c4f9181149b50c6f79f)
2. ![{\displaystyle s_{T}^{X,Y}=s_{T}^{X}+s_{T}^{Y}}](https://en.wikipedia.org/api/rest_v1/media/math/render/svg/a38af4505d73f780b30caef5e3bb3def6807c76a)
is then called T's combined reputation function by X and Y. By using '
' to designate this operator, we get
.
Belief Discounting
Let X and Y be two agents where
is X's opinion about Y's advice, and let T be the Target agent where
is Y's opinion about T expressed in an advice to X. Let
be the opinion such that:
1.
,
2.
,
3.
,
then
is called the discounting of
by
expressing X's opinion about T as a result of Y's advice to X. By using '
' to designate this operator, we can write
.
Reputation Discounting
Forgetting