Ranking: Difference between revisions

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{{main | Wikipedia: Mean reciprocal rank}}
{{main | Wikipedia: Mean reciprocal rank}}
If you only have one correct answer which is placed in rank <math>i</math> then the reciprocal rank is <math>1/i</math>.<br>
If you only have one correct answer which is placed in rank <math>i</math> then the reciprocal rank is <math>1/i</math>.<br>
For multiple queries and results, the mean reciprocal rank is simply <math>\mean(1/rank)</math>.
For multiple queries and results, the mean reciprocal rank is simply <math>\operatorname{mean}(1/rank)</math>.

Revision as of 20:52, 15 April 2024

Some notes on ranking techniques

Basics

Pointwise, Pairwise and Listwise Learning to Rank

Point-wise ranking

In point-wise ranking, you have some scores for you document \(\displaystyle y_i\) so you can train your model \(\displaystyle f\) to predict such scores in a


Metrics

See https://medium.com/swlh/rank-aware-recsys-evaluation-metrics-5191bba16832

Cumulative Gain

Suppose you have a list of results \(\displaystyle x_1,..., x_n\) with relevency \(\displaystyle r_1,...,r_n\).
Then the cumulative gain at position \(\displaystyle p\) is the sum of the relevency of the first \(\displaystyle p\) results: \(\displaystyle \begin{equation} CG_p = \sum_{i=1}^{p} r_i \end{equation} \)

The discounted cumulative gain (DCG) takes the position into account, discounting lower-ranked results: \(\displaystyle \begin{equation} DCG_p = \sum_{i=1}^{p} \frac{r_i}{\log_2 (i+1)} \end{equation} \)

The normalized discounted cumulative gain (NDCG) is 1-normalized by dividing over the best possible ranking: \(\displaystyle \begin{equation} NCDG_p = \frac{DCG_g(\mathbf{r})}{\max_{\mathbf{r}}DCG_p(\mathbf{r})} \end{equation} \)

Mean Reciprocal Rank

If you only have one correct answer which is placed in rank \(\displaystyle i\) then the reciprocal rank is \(\displaystyle 1/i\).
For multiple queries and results, the mean reciprocal rank is simply \(\displaystyle \operatorname{mean}(1/rank)\).