With the rapid growth of Web databases, it is necessary to extract and integrate large-scale data available in Deep Web automatically. But current Web search engines conduct page-level ranking, which are becoming inad...With the rapid growth of Web databases, it is necessary to extract and integrate large-scale data available in Deep Web automatically. But current Web search engines conduct page-level ranking, which are becoming inadequate for entity-oriented vertical search. In this paper, we present an entity-level ranking mechanism called LG-ERM for Deep Web queries based on local scoring and global aggregation. Unlike traditional approaches, LG-ERM considers more rank influencing factors including the uncertainty of entity extraction, the style information of the entities and the importance of the Web sources, as well as the entity relationship. By combining local scoring and global aggregation in ranking, the query result can be more accurate and effective to meet users' needs. The experiments demonstrate the feasibility and effectiveness of the key techniques of LG-ERM.展开更多
The choice of liquidity indicators is a key issue in global liquidity management. Money supply statistics such as M2 are no longer able to reflect the true scale of global liquidity due to the effect of financial glob...The choice of liquidity indicators is a key issue in global liquidity management. Money supply statistics such as M2 are no longer able to reflect the true scale of global liquidity due to the effect of financial globalization. External bank liabilities, as an important indicator to measure global liquidity conditions, are omitted by many countries in their broad money statistics. Given that financial institutions' external liabilities serve as a major source of fiscal shock as well as an important cause for the accumulation of monetary risk, it is imperative to include these external liabilities into the global liquidity indicator system.展开更多
基金Supported by the National Natural Science Foundation of China under Grant No.60673139the National High Technology Development and Research 863 Program of China under Grant No.2008AA01Z146
文摘With the rapid growth of Web databases, it is necessary to extract and integrate large-scale data available in Deep Web automatically. But current Web search engines conduct page-level ranking, which are becoming inadequate for entity-oriented vertical search. In this paper, we present an entity-level ranking mechanism called LG-ERM for Deep Web queries based on local scoring and global aggregation. Unlike traditional approaches, LG-ERM considers more rank influencing factors including the uncertainty of entity extraction, the style information of the entities and the importance of the Web sources, as well as the entity relationship. By combining local scoring and global aggregation in ranking, the query result can be more accurate and effective to meet users' needs. The experiments demonstrate the feasibility and effectiveness of the key techniques of LG-ERM.
文摘The choice of liquidity indicators is a key issue in global liquidity management. Money supply statistics such as M2 are no longer able to reflect the true scale of global liquidity due to the effect of financial globalization. External bank liabilities, as an important indicator to measure global liquidity conditions, are omitted by many countries in their broad money statistics. Given that financial institutions' external liabilities serve as a major source of fiscal shock as well as an important cause for the accumulation of monetary risk, it is imperative to include these external liabilities into the global liquidity indicator system.