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@@ -29,15 +29,6 @@ import java.util.stream.Stream;
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@Service
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@Service
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@Slf4j
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@Slf4j
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-/**
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- * V566 实验:基于 V563,按"供给类型(supply_type) + 驱动策略(driving_strategy)"对 item 加权/降权。
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- * 数据来源: alg_vid_feature_basic_info.feature JSON。
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- * 规则(硬编码,见 {@link #getSupplyWeight}):
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- * - supply_type ∈ {UGC, 垂直spider} → 0.8
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- * - supply_type = 自动AGC AND driving_strategy = 当下供需gap → 1.5
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- * - supply_type = 人工AGC AND driving_strategy ∈ {人工历史需求, 当下供需gap} → 1.2
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- * - 其他 → 1.0
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- */
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public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeModelBasic {
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public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeModelBasic {
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@ApolloJsonValue("${rank.score.merge.weightv566:}")
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@ApolloJsonValue("${rank.score.merge.weightv566:}")
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private Map<String, Double> mergeWeight;
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private Map<String, Double> mergeWeight;
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@@ -45,9 +36,57 @@ public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeM
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@Autowired
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@Autowired
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private FeatureService featureService;
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private FeatureService featureService;
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- // V566 供给加权规则用到的常量
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- private static final Set<String> SUPPLY_DEMOTE_TYPES = new HashSet<>(Arrays.asList("UGC", "垂直spider"));
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- private static final Set<String> AGC_BOOST_DRIVINGS = new HashSet<>(Arrays.asList("人工历史需求", "当下供需gap"));
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+ /**
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+ * V566 个性化召回白名单 (6 路):召回 key 含 mid/uid,依赖该用户行为信号。
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+ * 注:YearReturnCate2 因线上效果不佳, 2026-06-04 起移到非个性化白名单。
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+ */
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+ private static final Set<String> PERSONAL_RECALL_PUSH_FROMS = new HashSet<>(Arrays.asList(
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+ UserCate1RecallStrategy.PUSH_FORM,
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+ UserCate2RecallStrategy.PUSH_FORM,
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+ Return1Cate2RosRecallStrategy.PUSH_FORM,
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+ Return1Cate2StrRecallStrategy.PUSH_FORM,
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+ YearShareCate1RecallStrategy.PUSH_FROM,
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+ YearShareCate2RecallStrategy.PUSH_FROM
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+ ));
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+
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+ /**
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+ * V566 非个性化召回白名单 (17 路):只依赖 headVid + 地域/品类/相似度(vid-vid CF 也归此类)。
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+ * 含 5 路旧地域、新地域、城市、head province/cate、先验省份、return 相似、scene CF、YearReturnCate2。
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+ */
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+ private static final Set<String> NON_PERSONAL_RECALL_PUSH_FROMS = new HashSet<>(Arrays.asList(
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+ RegionHRecallStrategy.PUSH_FORM,
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+ RegionHDupRecallStrategy.PUSH_FORM,
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+ Region24HRecallStrategy.PUSH_FORM,
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+ RegionRelative24HRecallStrategy.PUSH_FORM,
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+ RegionRelative24HDupRecallStrategy.PUSH_FORM,
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+ RegionRealtimeRecallStrategyV1.PUSH_FORM,
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+ CityRovnRecallStrategy.PUSH_FROM,
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+ HeadProvinceCate1RecallStrategy.PUSH_FORM,
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+ HeadProvinceCate2RecallStrategy.PUSH_FORM,
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+ HeadCate2RovRecallStrategy.PUSH_FROM,
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+ PrioriProvinceRovnRecallStrategy.PUSH_FROM,
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+ PrioriProvinceStrRecallStrategy.PUSH_FROM,
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+ PrioriProvinceRosRecallStrategy.PUSH_FROM,
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+ ReturnVideoRecallStrategy.PUSH_FORM,
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+ SceneCFRovnRecallStrategy.PUSH_FORM,
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+ SceneCFRosnRecallStrategy.PUSH_FORM,
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+ YearReturnCate2RecallStrategy.PUSH_FROM
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+ ));
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+
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+ /** PERSONAL ∪ NON_PERSONAL = 23 路。用于 fetchCoarseRankScores 跳过流量池等不参与截断的 vid。 */
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+ private static final Set<String> ALL_ROV_PUSH_FROMS;
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+ static {
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+ Set<String> all = new HashSet<>(PERSONAL_RECALL_PUSH_FROMS);
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+ all.addAll(NON_PERSONAL_RECALL_PUSH_FROMS);
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+ ALL_ROV_PUSH_FROMS = Collections.unmodifiableSet(all);
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+ }
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+
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+ /*
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+ * 设计要点:
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+ * - fail-closed 白名单:RecallService 未来加新路不会自动进 V566,避免污染 vs V568 AB 对比
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+ * - 流量池 3 路 (flow_pool / quick_flow_pool / recall_strategy_hotspot) 不在任何名单——独立通道
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+ * - 调用顺序 = 个性化优先:同 vid 双类命中时归个性化,保护用户兴趣信号
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+ */
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@Override
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@Override
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public List<Video> mergeAndRankRovRecall(RankParam param) {
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public List<Video> mergeAndRankRovRecall(RankParam param) {
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@@ -62,42 +101,24 @@ public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeM
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Set<Long> setVideo = new HashSet<>();
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Set<Long> setVideo = new HashSet<>();
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setVideo.add(param.getHeadVid());
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setVideo.add(param.getHeadVid());
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List<Video> rovRecallRank = new ArrayList<>();
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List<Video> rovRecallRank = new ArrayList<>();
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- // -------------------5路特殊旧召回------------------
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- RecallUtils.extractOldSpecialRecall(mergeWeight.getOrDefault("oldSpecialN", (double) param.getSize()).intValue(), param, setVideo, rovRecallRank);
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- //-------------------return相似召回------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("v6", 5.0).intValue(), param, ReturnVideoRecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- //-------------------新地域召回------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("v1", 5.0).intValue(), param, RegionRealtimeRecallStrategyV1.PUSH_FORM, setVideo, rovRecallRank);
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- //-------------------scene cf rovn------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("sceneCFRovn", 5.0).intValue(), param, SceneCFRovnRecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- //-------------------scene cf rosn------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("sceneCFRosn", 5.0).intValue(), param, SceneCFRosnRecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- // -------------------user cate1------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("cate1RecallN", 5.0).intValue(), param, UserCate1RecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- // -------------------user cate2------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("cate2RecallN", 5.0).intValue(), param, UserCate2RecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- // -------------------head province cate1------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("headCate1RecallN", 3.0).intValue(), param, HeadProvinceCate1RecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- // -------------------head province cate2------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("headCate2RecallN", 3.0).intValue(), param, HeadProvinceCate2RecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- //-------------------head cate2 of rovn------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("headCate2Rov", 5.0).intValue(), param, HeadCate2RovRecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- //-------------------city rovn------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("cityRov", 5.0).intValue(), param, CityRovnRecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- //-------------------priori province rovn------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("prioriProvinceRov", 3.0).intValue(), param, PrioriProvinceRovnRecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- //-------------------priori province str------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("prioriProvinceStr", 1.0).intValue(), param, PrioriProvinceStrRecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- //-------------------priori province ros------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("prioriProvinceRos", 1.0).intValue(), param, PrioriProvinceRosRecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- //-------------------return1 cate2 ros------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("return1Cate2Ros", 5.0).intValue(), param, Return1Cate2RosRecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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- //-------------------return1 cate2 str------------------
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("return1Cate2Str", 5.0).intValue(), param, Return1Cate2StrRecallStrategy.PUSH_FORM, setVideo, rovRecallRank);
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-
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("yearShareCate1", 5.0).intValue(), param, YearShareCate1RecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("yearShareCate2", 5.0).intValue(), param, YearShareCate2RecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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- RecallUtils.extractRecall(mergeWeight.getOrDefault("yearReturnCate2", 5.0).intValue(), param, YearReturnCate2RecallStrategy.PUSH_FROM, setVideo, rovRecallRank);
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+
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+ // ============================================================
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+ // V566 实验:统一粗排分截断 (个性化 / 非个性化 两配额, 动态补足)
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+ // 总配额 coarseRankTopN,个性化占 personalRatio。先个性化按上限抢位,
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+ // 个性化不足时剩余名额转给非个性化,保证精排算力满载。
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+ //
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+ // 粗排分 = alg_vid_recommend_exp_feature_20250212.rovn_1h / rovn_24h 平均
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+ // ============================================================
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+ int totalTopN = mergeWeight.getOrDefault("coarseRankTopN", 80.0).intValue();
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+ double personalRatio = mergeWeight.getOrDefault("personalRatio", 0.4);
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+ int personalTopN = (int) Math.round(totalTopN * personalRatio);
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+ Map<Long, Double> coarseRankMap = fetchCoarseRankScores(param);
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+
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+ int sizeBeforePersonal = rovRecallRank.size();
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+ RecallUtils.extractAllAndTruncateByCoarseRank(personalTopN, param, setVideo, rovRecallRank, coarseRankMap, PERSONAL_RECALL_PUSH_FROMS);
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+ int personalActual = rovRecallRank.size() - sizeBeforePersonal;
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+ int nonPersonalBudget = totalTopN - personalActual; // 个性化不足时, 名额转给非个性化
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+ RecallUtils.extractAllAndTruncateByCoarseRank(nonPersonalBudget, param, setVideo, rovRecallRank, coarseRankMap, NON_PERSONAL_RECALL_PUSH_FROMS);
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// 记录召回源中的视频
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// 记录召回源中的视频
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this.rankBeforePostProcessor(rovRecallRank);
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this.rankBeforePostProcessor(rovRecallRank);
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@@ -259,24 +280,7 @@ public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeM
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score = fmRov * (rosAdd + rosW * newNorDNNScore) * (vorAdd + vorW * vor) + c1RovnScore + b0StrScore + b0RorScore + cnRovnScore + dnRovnScore;
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score = fmRov * (rosAdd + rosW * newNorDNNScore) * (vorAdd + vorW * vor) + c1RovnScore + b0StrScore + b0RorScore + cnRovnScore + dnRovnScore;
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- // ============== V566: 按供给类型 + 驱动策略加权 ==============
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- // 数据来源: alg_vid_feature_basic_info.feature.{supply_type, driving_strategy}
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- // 规则硬编码在 getSupplyWeight() 中
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Video video = item.getVideo();
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Video video = item.getVideo();
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- Map<String, String> vidBaseInfo = videoBaseInfoMap
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- .getOrDefault(String.valueOf(item.getVideoId()), Collections.emptyMap())
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- .getOrDefault("alg_vid_feature_basic_info", Collections.emptyMap());
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- String supplyType = vidBaseInfo.getOrDefault("supply_type", "unknown");
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- String drivingStrategy = vidBaseInfo.getOrDefault("driving_strategy", "unknown");
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- String sceneDimension = vidBaseInfo.getOrDefault("scene_dimension", "unknown");
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- double supplyTypeWeightValue = getSupplyWeight(supplyType, drivingStrategy);
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- item.getScoresMap().put("supplyType_" + supplyType, 1.0);
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- item.getScoresMap().put("drivingStrategy_" + drivingStrategy, 1.0);
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- item.getScoresMap().put("sceneDimension_" + sceneDimension, 1.0);
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- item.getScoresMap().put("supplyTypeWeight", supplyTypeWeightValue);
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- score = score * supplyTypeWeightValue;
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- // ============== V566 加权块结束 ==============
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-
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video.setScore(score);
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video.setScore(score);
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video.setSortScore(score);
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video.setSortScore(score);
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video.setScoresMap(item.getScoresMap());
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video.setScoresMap(item.getScoresMap());
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@@ -319,6 +323,77 @@ public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeM
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return result;
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return result;
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}
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}
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+ /**
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+ * V566 实验:拉取粗排分(按 vid → score 返回)。
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+ *
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+ * 数据源:alg_vid_recommend_exp_feature_20250212。
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+ * 表里没有现成 rovn 字段,需要从原子字段 (return_n_uv_*, exp_*) 用 plusSmooth 算出来。
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+ * 公式 = FeatureV6.oneTypeStatFeature 同口径:rovn = plusSmooth(return_n_uv, exp, plus, 1)
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+ * 默认 plus=30 与 FeatureV6.largerSmoothPlus 对齐,AB 对比不会因口径不同污染结论。
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+ *
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+ * Apollo 可调维度:
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+ * - coarseRovn1hW / coarseRovn24hW:1h 和 24h 的加权(默认 0.5/0.5)
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+ * - coarseRovn1hSmoothPlus / coarseRovn24hSmoothPlus:贝叶斯平滑系数(默认 30/30)
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+ *
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+ * 缺失自动归一化:单值缺失时剩下的撑起全部权重;两值都缺失则 caller 兜底 RovScore。
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+ */
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+ private Map<Long, Double> fetchCoarseRankScores(RankParam param) {
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+ if (param == null || param.getRecallResult() == null
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+ || CollectionUtils.isEmpty(param.getRecallResult().getData())) {
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+ return Collections.emptyMap();
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+ }
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+ Map<String, Double> mergeWeight = this.mergeWeight != null ? this.mergeWeight : Collections.emptyMap();
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+ double w1h = mergeWeight.getOrDefault("coarseRovn1hW", 0.5);
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+ double w24h = mergeWeight.getOrDefault("coarseRovn24hW", 0.5);
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+ double plus1h = mergeWeight.getOrDefault("coarseRovn1hSmoothPlus", 30.0);
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+ double plus24h = mergeWeight.getOrDefault("coarseRovn24hSmoothPlus", 30.0);
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+ // 只对参与统一截断的 23 路 vid 拉粗排分(跳过流量池 3 路,省 proto + RPC 延迟)
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+ List<String> vids = param.getRecallResult().getData().stream()
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+ .filter(d -> d != null && CollectionUtils.isNotEmpty(d.getVideos()))
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+ .filter(d -> ALL_ROV_PUSH_FROMS.contains(d.getPushFrom()))
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+ .flatMap(d -> d.getVideos().stream())
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+ .map(v -> String.valueOf(v.getVideoId()))
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+ .distinct()
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+ .collect(Collectors.toList());
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+ if (vids.isEmpty()) return Collections.emptyMap();
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+
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+ Map<String, Map<String, Map<String, String>>> feats = featureService.getVideoCoarseRankFeature(vids);
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+ Map<Long, Double> result = new HashMap<>(vids.size());
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+ for (String vid : vids) {
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+ Map<String, String> row = feats.getOrDefault(vid, Collections.emptyMap())
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+ .getOrDefault("alg_vid_recommend_exp_feature_20250212", Collections.emptyMap());
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+ Double rovn1h = computeRovn(row, "1h", plus1h);
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+ Double rovn24h = computeRovn(row, "24h", plus24h);
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+ // 加权平均,缺失自动归一化
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+ double sumW = (rovn1h != null ? w1h : 0) + (rovn24h != null ? w24h : 0);
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+ if (sumW <= 0) continue;
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+ double sumWS = (rovn1h != null ? rovn1h * w1h : 0) + (rovn24h != null ? rovn24h * w24h : 0);
|
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|
|
+ try {
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+ result.put(Long.parseLong(vid), sumWS / sumW);
|
|
|
|
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+ } catch (NumberFormatException ignore) { }
|
|
|
|
|
+ }
|
|
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|
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+ return result;
|
|
|
|
|
+ }
|
|
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|
|
+
|
|
|
|
|
+ /**
|
|
|
|
|
+ * 与 FeatureV6.oneTypeStatFeature 同口径:rovn = plusSmooth(return_n_uv, exp, plus, 1)
|
|
|
|
|
+ *
|
|
|
|
|
+ * 字段语义(区分 0 vs null):
|
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|
|
|
+ * - exp 是 period 有效性 anchor:null 或 ≤0 → 整个 period 无效(return null)
|
|
|
|
|
+ * - return_n_uv 缺失视为 0(真实信号"无回访"):rovn=0,参与加权(不会让另一时段兜底)
|
|
|
|
|
+ */
|
|
|
|
|
+ private static Double computeRovn(Map<String, String> row, String period, double smoothPlus) {
|
|
|
|
|
+ Double exp = parseDoubleOrNull(row.get("exp_" + period));
|
|
|
|
|
+ if (exp == null || exp <= 0) return null;
|
|
|
|
|
+ Double returnNuv = parseDoubleOrNull(row.get("return_n_uv_" + period));
|
|
|
|
|
+ return FeatureUtils.plusSmooth(returnNuv != null ? returnNuv : 0, exp, smoothPlus, 1);
|
|
|
|
|
+ }
|
|
|
|
|
+
|
|
|
|
|
+ private static Double parseDoubleOrNull(String s) {
|
|
|
|
|
+ if (StringUtils.isBlank(s)) return null;
|
|
|
|
|
+ try { return Double.parseDouble(s); } catch (NumberFormatException e) { return null; }
|
|
|
|
|
+ }
|
|
|
|
|
+
|
|
|
private UserShareReturnProfile parseUserProfile(Map<String, Map<String, String>> userOriginInfo) {
|
|
private UserShareReturnProfile parseUserProfile(Map<String, Map<String, String>> userOriginInfo) {
|
|
|
if (null != userOriginInfo) {
|
|
if (null != userOriginInfo) {
|
|
|
Map<String, String> c9 = userOriginInfo.get("alg_recsys_feature_user_share_return_stat");
|
|
Map<String, String> c9 = userOriginInfo.get("alg_recsys_feature_user_share_return_stat");
|
|
@@ -488,21 +563,4 @@ public class RankStrategy4RegionMergeModelV566 extends RankStrategy4RegionMergeM
|
|
|
}
|
|
}
|
|
|
return newScore;
|
|
return newScore;
|
|
|
}
|
|
}
|
|
|
-
|
|
|
|
|
- /**
|
|
|
|
|
- * V566 供给加权规则(硬编码)。
|
|
|
|
|
- * 规则顺序固定:命中即返回,按业务优先级从高到低。
|
|
|
|
|
- */
|
|
|
|
|
- private double getSupplyWeight(String supplyType, String drivingStrategy) {
|
|
|
|
|
- if (SUPPLY_DEMOTE_TYPES.contains(supplyType)) {
|
|
|
|
|
- return 0.8;
|
|
|
|
|
- }
|
|
|
|
|
- if ("自动AGC".equals(supplyType) && "当下供需gap".equals(drivingStrategy)) {
|
|
|
|
|
- return 1.5;
|
|
|
|
|
- }
|
|
|
|
|
- if ("人工AGC".equals(supplyType) && AGC_BOOST_DRIVINGS.contains(drivingStrategy)) {
|
|
|
|
|
- return 1.2;
|
|
|
|
|
- }
|
|
|
|
|
- return 1.0;
|
|
|
|
|
- }
|
|
|
|
|
}
|
|
}
|