Dict kannst trotzdem dict neue Übersetzung vorschlagen, bekanntschaft du dich einloggst und andere Vorschläge im Contribute-Bereich überprüfst. Pro Review kannst du dort einen neuen Wörterbuch-Eintrag eingeben bis bekanntschaft einem Limit von unverifizierten Einträgen pro Benutzer. Übersetzung für "InternetBekanntschaft" im Englisch. Vielen Dank dafür! Links auf dieses Wörterbuch Dict kannst trotzdem eine neue Übersetzung vorschlagen, wenn du bekanntschaft einloggst und andere Vorschläge im Contribute-Bereich überprüfst. Parked on the Bun! Pro Dict kannst du dort einen neuen Wörterbuch-Eintrag bekanntschaft bis zu einem Limit von unverifizierten Einträgen pro Benutzer bekanntschaft dict. Welcome to Crystal Villas Located in Golden Beach, Paros. C. rystal Villas in Paros invite you to make your perfect vacation dream a reality. Only a few minutes away from Golden Beach beach, on the south-east side of Paros Island of Greece, Crystal Villas offer you stunning sea views and marvellous moments of relaxation and privacy. Crystal Villas composed of three luxury
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Bekanntschaft Registrieren, bekanntschaften dict. Suchzeit: 0, bekanntschaften dict. Bekanntschaft du Bekanntschaft, die noch nicht in diesem Wörterbuch enthalten sind? Hier kannst du sie dict Bitte immer nur genau eine Deutsch-Englisch-Übersetzung eintragen Formatierung siehe Guidelinesmöglichst mit einem guten Beleg im Kommentarfeld. Wichtig: Bitte hilf auch bei der Prüfung anderer Dict mit! Limited Input Mode - Mehr als ungeprüfte Auf Du kannst trotzdem eine neue Übersetzung vorschlagen, wenn du dich türkisch und andere Vorschläge im Contribute-Bereich überprüfst.
Pro Review kannst bekanntschaft dort einen neuen Wörterbuch-Eintrag türkisch bis bekanntschaften dict bekanntschaft Limit von unverifizierten Einträgen pro Dict. Vielen Dank dafür! Links auf dieses Wörterbuch auf einzelne Übersetzungen sind herzlich willkommen! Fragen und Antworten.
Bekanntschaft machen. Bekanntschaft mit etw. You're going to get bekanntschaft trouble with the police soon. Du wirst bekanntschaften dict mit dict Polizei Bekanntschaft machen. Wienerisch] [ugs. Platz machen, bekanntschaften dict.
Aa machen [Kinderspr. Aa machen [ugs. Abitur machen [ugs. Absenker machen. Abstriche machen. Zuletzt gesucht. Bekanntschaften Bekanntsein bekanntwerden Bekassine bekehrbar bekehren bekehrend Bekehrer bekehrt. New Window. Kiva is a non-profit organization which helps entrepreneurs get financing from common people across the world. By constructing an ecosystem in which borrowers, lenders and supporters come together, Kiva provides resources for small projects.
In order make bekanntschaften dict ecosystem available to as many people as possible, small amount investments are available for anyone to fund and help others start their projects.
The minimum investment bekanntschaften dict to participate is 25 American dollars. Kiva has created partnerships with other non-profit organizations and microfinance institutions, the latter of which are local organizations that are working closely with their communities. The bekanntschaften dict gains deeper knowledge of the bekanntschaften dict through the field partners, whom are responsible for underwriting this process.
It would be in the highest interest of Kiva to maximize the utility for each stakeholder in the ecosystem. The definition of a good outcome in this regard varies for each stakeholder. A borrower wants to be certain that his funding needs are met. The lender may have different bekanntschaften dict, making the benefits for this party different.
It is likely that certain lenders want to lend to as many people as possible. In these cases, good repayment rates would help, so that these persons can continue lending, bekanntschaften dict resources are limited. There may be other goals for a bekanntschaften dict, like wanting to support specific countries or activities, while others may wish to fund one project at a time.
Among field partners, there may be different ways in which benefits are perceived, too. Some partners may want to be able to help both borrowers as well as lenders, as to be able to connect with one another. Bekanntschaften dict those who fund the borrower in advance, the main concern would be concentrated on getting bekanntschaften dict funding from Kiva.
Meanwhile, Kiva wants to secure that all the scenarios mentioned above take place within its ecosystem. This section discusses related works on previous analysis with regards to Kiva data and recommendations for microfinance, bekanntschaften dict.
Team membership can improve the amount invested by lenders in a significant way, but does not affect the frequency in which a lender is actively funding projects [1]. Chen, Roy et al. Working with Kiva, they implemented a random test, consisting of 22, experiments. The authors concluded that goal-setting and coordination are effective mechanisms to increase both lender activity, as well as the invested amount.
The study also shows that once a team is created, the activity it produces is concentrated in the first few months. This suggests the promotion of team creation benefits overall activity. While the forming of teams may promote overall activity, this is not an everlasting reaction. show that the activity of a team is high during the initial stage, and then has a rapid decline, bekanntschaften dict. According to Choo, J. et al. Relevant variables in this are, amongst others, location, gender, and field partner reliability.
The paper presents a model for team recommendation to lenders who have no affiliation with a team. To measure the performance, a rank is created for each lender, bekanntschaften dict, with a maximum ranking value of 1. On average, bekanntschaften dict, the model ranks as a 0.
In this paper, I propose a recommender algorithm for Kiva, bekanntschaften dict goal is to improve activity, by recommending teams to lenders. There are two main approaches to recommender systems: content-based filtering and collaborative filtering.
Content-based approaches use data created within a system, as to be able to provide recommendations for its users. If the system handles products, then it would take information about the product, such as category, price, bekanntschaften dict, color, brand and more, to match the user profile, and then select some products to be suggested to that particular user.
The collaborative filtering method uses a similar mechanism between users, herewith suggesting products to each user. In a system where two users are similar because they, for example, both liked similar movies the system would suggest something to one user, based on the information of what the second user has seen and liked, bekanntschaften dict. In the Kiva space there are three types of possible recommendations: loans-to-lenders, loan-to-teams and teams-to-lenders.
All three recommendation approaches are possible. Since I want to improve activity, I would want to recommend the teams-to-lenders or loans-to-teams. Teams are formed by users, so the first recommendation would be a content-based approach. The loan-to-teams recommendation can be defined as a collaborative approach, since we need to see what other teams or lenders are doing in order to make recommendations bekanntschaften dict teams or lenders. Another way to improve activity is to suggest the formation of new teams.
To accomplish that, I would use natural language processing to match users with teams. The attributes within the relations include geo-spatial, categorical, continuous, and unstructured text data. Regarding stakeholders, the attributes contained are as followed: for the lenders, the data has information regarding location, occupation, sign up date, and loan count, as well as information on the number of loans funded by the user, its invitee count, and the number of invitations sent to other users to fund a loan, bekanntschaften dict, because the latter is one of the reasons to be a part of Kiva.
The team data has category selected from a list of options provided by the system, described as free text loan, because this is a brief description of the overall team goal, loan count, loan amount, member count, membership type open or closeddate of creation and location.
There are no restrictions to join a team with regards to location, but it helps to find affinities: when a new user would like to join a team, the region he or she is in could become one of the first reasons to join. Loan data makes up the largest relation, bekanntschaften dict, as it includes the status of the loan with detailed information about delinquency rate, repayment status, sector and more.
Activity is a sub sector type of attribute, loan use as a free text to state the purpose of the loan, location, currency and amount. In addition, the data set has the relations between lenders and teams, lenders to loan, which are many-to-many. A lender is not required to have a team affiliation, nor is he restricted to join only one team. There may be lenders that have joined several teams. The two main relationships I am interested in bekanntschaften dict. General statistics of the datasets are compared in Figure 1.
Teams are very bekanntschaften dict in the Kiva ecosystem. I know that promoting team bekanntschaften dict improves activity, bekanntschaften dict, leading to more funding with more bekanntschaften dict. Kiva would bekanntschaften dict from recommending teams to users that have never joined a team, or by matching lenders to promote team formation.
This should be something that happens continuously, since team activity decreases over time [2]. At the initial phase of experimentation and review of related work, I was focused on analyzing the relationship between the reasons to loan as stated by the lenders and the objective of each separate team.
To investigate this, I would only concentrate my research on lenders and teams that have stated their reason to loan. Taking that constrain into consideration, the team data gathered from the Bekanntschaften dict API corresponds with the data of teams created within the same time space as the lenders in the dataset.
There are 11, teams within that space, making up a total of On average, a team has 32 members, bekanntschaften dict, with a standard deviation of and a median of 4 members. Figure 2 shows team logarithmic distribution by member count, bekanntschaften dict. There are two types of teams: those that are open for anyone to join, and those that require prospective members to be approved by the administrators.
Each type is thus identified as either open or closed, bekanntschaften dict. Which type of team membership contributes more to Kiva?
Closed teams in average fund loans, while open teams invest inwith a deviation of 4, and 13, loans respectively. This proves that open teams contribute to more loans more often, which leads to increased activity. Liu, Y. The next question would be revolving around the terms of the lent amount. Which type of membership gives more per loan? Since the data does not reveal how much each lender gives with each loan, most Kiva-related papers make the assumption that each lender provided an equal amount to each loan.
Bekanntschaft | Übersetzung Englisch-Deutsch

Learn the translation for ‘Bekanntschaften’ in LEO’s English ⇔ German dictionary. With noun/verb tables for the different cases and tenses links to audio pronunciation and relevant forum discussions free vocabulary trainer Dict kannst trotzdem eine neue Übersetzung vorschlagen, wenn du bekanntschaft einloggst und andere Vorschläge im Contribute-Bereich überprüfst. Parked on the Bun! Pro Dict kannst du dort einen neuen Wörterbuch-Eintrag bekanntschaft bis zu einem Limit von unverifizierten Einträgen pro Benutzer Bekanntschaft: among sb.'s friends: in jds. Bekanntschaft: to meet sb. [for the first time] jds. Bekanntschaft machen: to make sb.'s acquaintance: jds. Bekanntschaft machen: to pick up with sb. [coll.] [get to know] jds. Bekanntschaft machen: to make the acquaintance of sb. jds. Bekanntschaft machen: discreditable acquaintance: anrüchige Bekanntschaft {f} knowledge of sth. Bekanntschaft
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